from random import randrange, choice
from math import log
from sympy.ntheory import primefactors
from sympy import multiplicity, factorint, Symbol

from sympy.combinatorics import Permutation
from sympy.combinatorics.permutations import (_af_commutes_with, _af_invert,
    _af_rmul, _af_rmuln, _af_pow, Cycle)
from sympy.combinatorics.util import (_check_cycles_alt_sym,
    _distribute_gens_by_base, _orbits_transversals_from_bsgs,
    _handle_precomputed_bsgs, _base_ordering, _strong_gens_from_distr,
    _strip, _strip_af)
from sympy.core import Basic
from sympy.functions.combinatorial.factorials import factorial
from sympy.ntheory import sieve
from sympy.utilities.iterables import has_variety, is_sequence, uniq
from sympy.testing.randtest import _randrange
from itertools import islice
from sympy.core.sympify import _sympify
rmul = Permutation.rmul_with_af
_af_new = Permutation._af_new


class PermutationGroup(Basic):
    """The class defining a Permutation group.

    Explanation
    ===========

    PermutationGroup([p1, p2, ..., pn]) returns the permutation group
    generated by the list of permutations. This group can be supplied
    to Polyhedron if one desires to decorate the elements to which the
    indices of the permutation refer.

    Examples
    ========

    >>> from sympy.combinatorics import Permutation
    >>> from sympy.combinatorics.polyhedron import Polyhedron
    >>> from sympy.combinatorics.perm_groups import PermutationGroup

    The permutations corresponding to motion of the front, right and
    bottom face of a 2x2 Rubik's cube are defined:

    >>> F = Permutation(2, 19, 21, 8)(3, 17, 20, 10)(4, 6, 7, 5)
    >>> R = Permutation(1, 5, 21, 14)(3, 7, 23, 12)(8, 10, 11, 9)
    >>> D = Permutation(6, 18, 14, 10)(7, 19, 15, 11)(20, 22, 23, 21)

    These are passed as permutations to PermutationGroup:

    >>> G = PermutationGroup(F, R, D)
    >>> G.order()
    3674160

    The group can be supplied to a Polyhedron in order to track the
    objects being moved. An example involving the 2x2 Rubik's cube is
    given there, but here is a simple demonstration:

    >>> a = Permutation(2, 1)
    >>> b = Permutation(1, 0)
    >>> G = PermutationGroup(a, b)
    >>> P = Polyhedron(list('ABC'), pgroup=G)
    >>> P.corners
    (A, B, C)
    >>> P.rotate(0) # apply permutation 0
    >>> P.corners
    (A, C, B)
    >>> P.reset()
    >>> P.corners
    (A, B, C)

    Or one can make a permutation as a product of selected permutations
    and apply them to an iterable directly:

    >>> P10 = G.make_perm([0, 1])
    >>> P10('ABC')
    ['C', 'A', 'B']

    See Also
    ========

    sympy.combinatorics.polyhedron.Polyhedron,
    sympy.combinatorics.permutations.Permutation

    References
    ==========

    .. [1] Holt, D., Eick, B., O'Brien, E.
           "Handbook of Computational Group Theory"

    .. [2] Seress, A.
           "Permutation Group Algorithms"

    .. [3] https://en.wikipedia.org/wiki/Schreier_vector

    .. [4] https://en.wikipedia.org/wiki/Nielsen_transformation#Product_replacement_algorithm

    .. [5] Frank Celler, Charles R.Leedham-Green, Scott H.Murray,
           Alice C.Niemeyer, and E.A.O'Brien. "Generating Random
           Elements of a Finite Group"

    .. [6] https://en.wikipedia.org/wiki/Block_%28permutation_group_theory%29

    .. [7] http://www.algorithmist.com/index.php/Union_Find

    .. [8] https://en.wikipedia.org/wiki/Multiply_transitive_group#Multiply_transitive_groups

    .. [9] https://en.wikipedia.org/wiki/Center_%28group_theory%29

    .. [10] https://en.wikipedia.org/wiki/Centralizer_and_normalizer

    .. [11] http://groupprops.subwiki.org/wiki/Derived_subgroup

    .. [12] https://en.wikipedia.org/wiki/Nilpotent_group

    .. [13] http://www.math.colostate.edu/~hulpke/CGT/cgtnotes.pdf

    .. [14] https://www.gap-system.org/Manuals/doc/ref/manual.pdf

    """
    is_group = True

    def __new__(cls, *args, dups=True, **kwargs):
        """The default constructor. Accepts Cycle and Permutation forms.
        Removes duplicates unless ``dups`` keyword is ``False``.
        """
        if not args:
            args = [Permutation()]
        else:
            args = list(args[0] if is_sequence(args[0]) else args)
            if not args:
                args = [Permutation()]
        if any(isinstance(a, Cycle) for a in args):
            args = [Permutation(a) for a in args]
        if has_variety(a.size for a in args):
            degree = kwargs.pop('degree', None)
            if degree is None:
                degree = max(a.size for a in args)
            for i in range(len(args)):
                if args[i].size != degree:
                    args[i] = Permutation(args[i], size=degree)
        if dups:
            args = list(uniq([_af_new(list(a)) for a in args]))
        if len(args) > 1:
            args = [g for g in args if not g.is_identity]
        obj = Basic.__new__(cls, *args, **kwargs)
        obj._generators = args
        obj._order = None
        obj._center = []
        obj._is_abelian = None
        obj._is_transitive = None
        obj._is_sym = None
        obj._is_alt = None
        obj._is_primitive = None
        obj._is_nilpotent = None
        obj._is_solvable = None
        obj._is_trivial = None
        obj._transitivity_degree = None
        obj._max_div = None
        obj._is_perfect = None
        obj._is_cyclic = None
        obj._r = len(obj._generators)
        obj._degree = obj._generators[0].size

        # these attributes are assigned after running schreier_sims
        obj._base = []
        obj._strong_gens = []
        obj._strong_gens_slp = []
        obj._basic_orbits = []
        obj._transversals = []
        obj._transversal_slp = []

        # these attributes are assigned after running _random_pr_init
        obj._random_gens = []

        # finite presentation of the group as an instance of `FpGroup`
        obj._fp_presentation = None
        return obj

    def __getitem__(self, i):
        return self._generators[i]

    def __contains__(self, i):
        """Return ``True`` if *i* is contained in PermutationGroup.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, PermutationGroup
        >>> p = Permutation(1, 2, 3)
        >>> Permutation(3) in PermutationGroup(p)
        True

        """
        if not isinstance(i, Permutation):
            raise TypeError("A PermutationGroup contains only Permutations as "
                            "elements, not elements of type %s" % type(i))
        return self.contains(i)

    def __len__(self):
        return len(self._generators)

    def __eq__(self, other):
        """Return ``True`` if PermutationGroup generated by elements in the
        group are same i.e they represent the same PermutationGroup.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> p = Permutation(0, 1, 2, 3, 4, 5)
        >>> G = PermutationGroup([p, p**2])
        >>> H = PermutationGroup([p**2, p])
        >>> G.generators == H.generators
        False
        >>> G == H
        True

        """
        if not isinstance(other, PermutationGroup):
            return False

        set_self_gens = set(self.generators)
        set_other_gens = set(other.generators)

        # before reaching the general case there are also certain
        # optimisation and obvious cases requiring less or no actual
        # computation.
        if set_self_gens == set_other_gens:
            return True

        # in the most general case it will check that each generator of
        # one group belongs to the other PermutationGroup and vice-versa
        for gen1 in set_self_gens:
            if not other.contains(gen1):
                return False
        for gen2 in set_other_gens:
            if not self.contains(gen2):
                return False
        return True

    def __hash__(self):
        return super().__hash__()

    def __mul__(self, other):
        """
        Return the direct product of two permutation groups as a permutation
        group.

        Explanation
        ===========

        This implementation realizes the direct product by shifting the index
        set for the generators of the second group: so if we have ``G`` acting
        on ``n1`` points and ``H`` acting on ``n2`` points, ``G*H`` acts on
        ``n1 + n2`` points.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import CyclicGroup
        >>> G = CyclicGroup(5)
        >>> H = G*G
        >>> H
        PermutationGroup([
            (9)(0 1 2 3 4),
            (5 6 7 8 9)])
        >>> H.order()
        25

        """
        if isinstance(other, Permutation):
            return Coset(other, self, dir='+')
        gens1 = [perm._array_form for perm in self.generators]
        gens2 = [perm._array_form for perm in other.generators]
        n1 = self._degree
        n2 = other._degree
        start = list(range(n1))
        end = list(range(n1, n1 + n2))
        for i in range(len(gens2)):
            gens2[i] = [x + n1 for x in gens2[i]]
        gens2 = [start + gen for gen in gens2]
        gens1 = [gen + end for gen in gens1]
        together = gens1 + gens2
        gens = [_af_new(x) for x in together]
        return PermutationGroup(gens)

    def _random_pr_init(self, r, n, _random_prec_n=None):
        r"""Initialize random generators for the product replacement algorithm.

        Explanation
        ===========

        The implementation uses a modification of the original product
        replacement algorithm due to Leedham-Green, as described in [1],
        pp. 69-71; also, see [2], pp. 27-29 for a detailed theoretical
        analysis of the original product replacement algorithm, and [4].

        The product replacement algorithm is used for producing random,
        uniformly distributed elements of a group `G` with a set of generators
        `S`. For the initialization ``_random_pr_init``, a list ``R`` of
        `\max\{r, |S|\}` group generators is created as the attribute
        ``G._random_gens``, repeating elements of `S` if necessary, and the
        identity element of `G` is appended to ``R`` - we shall refer to this
        last element as the accumulator. Then the function ``random_pr()``
        is called ``n`` times, randomizing the list ``R`` while preserving
        the generation of `G` by ``R``. The function ``random_pr()`` itself
        takes two random elements ``g, h`` among all elements of ``R`` but
        the accumulator and replaces ``g`` with a randomly chosen element
        from `\{gh, g(~h), hg, (~h)g\}`. Then the accumulator is multiplied
        by whatever ``g`` was replaced by. The new value of the accumulator is
        then returned by ``random_pr()``.

        The elements returned will eventually (for ``n`` large enough) become
        uniformly distributed across `G` ([5]). For practical purposes however,
        the values ``n = 50, r = 11`` are suggested in [1].

        Notes
        =====

        THIS FUNCTION HAS SIDE EFFECTS: it changes the attribute
        self._random_gens

        See Also
        ========

        random_pr

        """
        deg = self.degree
        random_gens = [x._array_form for x in self.generators]
        k = len(random_gens)
        if k < r:
            for i in range(k, r):
                random_gens.append(random_gens[i - k])
        acc = list(range(deg))
        random_gens.append(acc)
        self._random_gens = random_gens

        # handle randomized input for testing purposes
        if _random_prec_n is None:
            for i in range(n):
                self.random_pr()
        else:
            for i in range(n):
                self.random_pr(_random_prec=_random_prec_n[i])

    def _union_find_merge(self, first, second, ranks, parents, not_rep):
        """Merges two classes in a union-find data structure.

        Explanation
        ===========

        Used in the implementation of Atkinson's algorithm as suggested in [1],
        pp. 83-87. The class merging process uses union by rank as an
        optimization. ([7])

        Notes
        =====

        THIS FUNCTION HAS SIDE EFFECTS: the list of class representatives,
        ``parents``, the list of class sizes, ``ranks``, and the list of
        elements that are not representatives, ``not_rep``, are changed due to
        class merging.

        See Also
        ========

        minimal_block, _union_find_rep

        References
        ==========

        .. [1] Holt, D., Eick, B., O'Brien, E.
               "Handbook of computational group theory"

        .. [7] http://www.algorithmist.com/index.php/Union_Find

        """
        rep_first = self._union_find_rep(first, parents)
        rep_second = self._union_find_rep(second, parents)
        if rep_first != rep_second:
            # union by rank
            if ranks[rep_first] >= ranks[rep_second]:
                new_1, new_2 = rep_first, rep_second
            else:
                new_1, new_2 = rep_second, rep_first
            total_rank = ranks[new_1] + ranks[new_2]
            if total_rank > self.max_div:
                return -1
            parents[new_2] = new_1
            ranks[new_1] = total_rank
            not_rep.append(new_2)
            return 1
        return 0

    def _union_find_rep(self, num, parents):
        """Find representative of a class in a union-find data structure.

        Explanation
        ===========

        Used in the implementation of Atkinson's algorithm as suggested in [1],
        pp. 83-87. After the representative of the class to which ``num``
        belongs is found, path compression is performed as an optimization
        ([7]).

        Notes
        =====

        THIS FUNCTION HAS SIDE EFFECTS: the list of class representatives,
        ``parents``, is altered due to path compression.

        See Also
        ========

        minimal_block, _union_find_merge

        References
        ==========

        .. [1] Holt, D., Eick, B., O'Brien, E.
               "Handbook of computational group theory"

        .. [7] http://www.algorithmist.com/index.php/Union_Find

        """
        rep, parent = num, parents[num]
        while parent != rep:
            rep = parent
            parent = parents[rep]
        # path compression
        temp, parent = num, parents[num]
        while parent != rep:
            parents[temp] = rep
            temp = parent
            parent = parents[temp]
        return rep

    @property
    def base(self):
        """Return a base from the Schreier-Sims algorithm.

        Explanation
        ===========

        For a permutation group `G`, a base is a sequence of points
        `B = (b_1, b_2, ..., b_k)` such that no element of `G` apart
        from the identity fixes all the points in `B`. The concepts of
        a base and strong generating set and their applications are
        discussed in depth in [1], pp. 87-89 and [2], pp. 55-57.

        An alternative way to think of `B` is that it gives the
        indices of the stabilizer cosets that contain more than the
        identity permutation.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, PermutationGroup
        >>> G = PermutationGroup([Permutation(0, 1, 3)(2, 4)])
        >>> G.base
        [0, 2]

        See Also
        ========

        strong_gens, basic_transversals, basic_orbits, basic_stabilizers

        """
        if self._base == []:
            self.schreier_sims()
        return self._base

    def baseswap(self, base, strong_gens, pos, randomized=False,
                 transversals=None, basic_orbits=None, strong_gens_distr=None):
        r"""Swap two consecutive base points in base and strong generating set.

        Explanation
        ===========

        If a base for a group `G` is given by `(b_1, b_2, ..., b_k)`, this
        function returns a base `(b_1, b_2, ..., b_{i+1}, b_i, ..., b_k)`,
        where `i` is given by ``pos``, and a strong generating set relative
        to that base. The original base and strong generating set are not
        modified.

        The randomized version (default) is of Las Vegas type.

        Parameters
        ==========

        base, strong_gens
            The base and strong generating set.
        pos
            The position at which swapping is performed.
        randomized
            A switch between randomized and deterministic version.
        transversals
            The transversals for the basic orbits, if known.
        basic_orbits
            The basic orbits, if known.
        strong_gens_distr
            The strong generators distributed by basic stabilizers, if known.

        Returns
        =======

        (base, strong_gens)
            ``base`` is the new base, and ``strong_gens`` is a generating set
            relative to it.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import SymmetricGroup
        >>> from sympy.combinatorics.testutil import _verify_bsgs
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> S = SymmetricGroup(4)
        >>> S.schreier_sims()
        >>> S.base
        [0, 1, 2]
        >>> base, gens = S.baseswap(S.base, S.strong_gens, 1, randomized=False)
        >>> base, gens
        ([0, 2, 1],
        [(0 1 2 3), (3)(0 1), (1 3 2),
         (2 3), (1 3)])

        check that base, gens is a BSGS

        >>> S1 = PermutationGroup(gens)
        >>> _verify_bsgs(S1, base, gens)
        True

        See Also
        ========

        schreier_sims

        Notes
        =====

        The deterministic version of the algorithm is discussed in
        [1], pp. 102-103; the randomized version is discussed in [1], p.103, and
        [2], p.98. It is of Las Vegas type.
        Notice that [1] contains a mistake in the pseudocode and
        discussion of BASESWAP: on line 3 of the pseudocode,
        `|\beta_{i+1}^{\left\langle T\right\rangle}|` should be replaced by
        `|\beta_{i}^{\left\langle T\right\rangle}|`, and the same for the
        discussion of the algorithm.

        """
        # construct the basic orbits, generators for the stabilizer chain
        # and transversal elements from whatever was provided
        transversals, basic_orbits, strong_gens_distr = \
            _handle_precomputed_bsgs(base, strong_gens, transversals,
                                 basic_orbits, strong_gens_distr)
        base_len = len(base)
        degree = self.degree
        # size of orbit of base[pos] under the stabilizer we seek to insert
        # in the stabilizer chain at position pos + 1
        size = len(basic_orbits[pos])*len(basic_orbits[pos + 1]) \
            //len(_orbit(degree, strong_gens_distr[pos], base[pos + 1]))
        # initialize the wanted stabilizer by a subgroup
        if pos + 2 > base_len - 1:
            T = []
        else:
            T = strong_gens_distr[pos + 2][:]
        # randomized version
        if randomized is True:
            stab_pos = PermutationGroup(strong_gens_distr[pos])
            schreier_vector = stab_pos.schreier_vector(base[pos + 1])
            # add random elements of the stabilizer until they generate it
            while len(_orbit(degree, T, base[pos])) != size:
                new = stab_pos.random_stab(base[pos + 1],
                                           schreier_vector=schreier_vector)
                T.append(new)
        # deterministic version
        else:
            Gamma = set(basic_orbits[pos])
            Gamma.remove(base[pos])
            if base[pos + 1] in Gamma:
                Gamma.remove(base[pos + 1])
            # add elements of the stabilizer until they generate it by
            # ruling out member of the basic orbit of base[pos] along the way
            while len(_orbit(degree, T, base[pos])) != size:
                gamma = next(iter(Gamma))
                x = transversals[pos][gamma]
                temp = x._array_form.index(base[pos + 1]) # (~x)(base[pos + 1])
                if temp not in basic_orbits[pos + 1]:
                    Gamma = Gamma - _orbit(degree, T, gamma)
                else:
                    y = transversals[pos + 1][temp]
                    el = rmul(x, y)
                    if el(base[pos]) not in _orbit(degree, T, base[pos]):
                        T.append(el)
                        Gamma = Gamma - _orbit(degree, T, base[pos])
        # build the new base and strong generating set
        strong_gens_new_distr = strong_gens_distr[:]
        strong_gens_new_distr[pos + 1] = T
        base_new = base[:]
        base_new[pos], base_new[pos + 1] = base_new[pos + 1], base_new[pos]
        strong_gens_new = _strong_gens_from_distr(strong_gens_new_distr)
        for gen in T:
            if gen not in strong_gens_new:
                strong_gens_new.append(gen)
        return base_new, strong_gens_new

    @property
    def basic_orbits(self):
        """
        Return the basic orbits relative to a base and strong generating set.

        Explanation
        ===========

        If `(b_1, b_2, ..., b_k)` is a base for a group `G`, and
        `G^{(i)} = G_{b_1, b_2, ..., b_{i-1}}` is the ``i``-th basic stabilizer
        (so that `G^{(1)} = G`), the ``i``-th basic orbit relative to this base
        is the orbit of `b_i` under `G^{(i)}`. See [1], pp. 87-89 for more
        information.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import SymmetricGroup
        >>> S = SymmetricGroup(4)
        >>> S.basic_orbits
        [[0, 1, 2, 3], [1, 2, 3], [2, 3]]

        See Also
        ========

        base, strong_gens, basic_transversals, basic_stabilizers

        """
        if self._basic_orbits == []:
            self.schreier_sims()
        return self._basic_orbits

    @property
    def basic_stabilizers(self):
        """
        Return a chain of stabilizers relative to a base and strong generating
        set.

        Explanation
        ===========

        The ``i``-th basic stabilizer `G^{(i)}` relative to a base
        `(b_1, b_2, ..., b_k)` is `G_{b_1, b_2, ..., b_{i-1}}`. For more
        information, see [1], pp. 87-89.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import AlternatingGroup
        >>> A = AlternatingGroup(4)
        >>> A.schreier_sims()
        >>> A.base
        [0, 1]
        >>> for g in A.basic_stabilizers:
        ...     print(g)
        ...
        PermutationGroup([
            (3)(0 1 2),
            (1 2 3)])
        PermutationGroup([
            (1 2 3)])

        See Also
        ========

        base, strong_gens, basic_orbits, basic_transversals

        """

        if self._transversals == []:
            self.schreier_sims()
        strong_gens = self._strong_gens
        base = self._base
        if not base: # e.g. if self is trivial
            return []
        strong_gens_distr = _distribute_gens_by_base(base, strong_gens)
        basic_stabilizers = []
        for gens in strong_gens_distr:
            basic_stabilizers.append(PermutationGroup(gens))
        return basic_stabilizers

    @property
    def basic_transversals(self):
        """
        Return basic transversals relative to a base and strong generating set.

        Explanation
        ===========

        The basic transversals are transversals of the basic orbits. They
        are provided as a list of dictionaries, each dictionary having
        keys - the elements of one of the basic orbits, and values - the
        corresponding transversal elements. See [1], pp. 87-89 for more
        information.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import AlternatingGroup
        >>> A = AlternatingGroup(4)
        >>> A.basic_transversals
        [{0: (3), 1: (3)(0 1 2), 2: (3)(0 2 1), 3: (0 3 1)}, {1: (3), 2: (1 2 3), 3: (1 3 2)}]

        See Also
        ========

        strong_gens, base, basic_orbits, basic_stabilizers

        """

        if self._transversals == []:
            self.schreier_sims()
        return self._transversals

    def composition_series(self):
        r"""
        Return the composition series for a group as a list
        of permutation groups.

        Explanation
        ===========

        The composition series for a group `G` is defined as a
        subnormal series `G = H_0 > H_1 > H_2 \ldots` A composition
        series is a subnormal series such that each factor group
        `H(i+1) / H(i)` is simple.
        A subnormal series is a composition series only if it is of
        maximum length.

        The algorithm works as follows:
        Starting with the derived series the idea is to fill
        the gap between `G = der[i]` and `H = der[i+1]` for each
        `i` independently. Since, all subgroups of the abelian group
        `G/H` are normal so, first step is to take the generators
        `g` of `G` and add them to generators of `H` one by one.

        The factor groups formed are not simple in general. Each
        group is obtained from the previous one by adding one
        generator `g`, if the previous group is denoted by `H`
        then the next group `K` is generated by `g` and `H`.
        The factor group `K/H` is cyclic and it's order is
        `K.order()//G.order()`. The series is then extended between
        `K` and `H` by groups generated by powers of `g` and `H`.
        The series formed is then prepended to the already existing
        series.

        Examples
        ========
        >>> from sympy.combinatorics.named_groups import SymmetricGroup
        >>> from sympy.combinatorics.named_groups import CyclicGroup
        >>> S = SymmetricGroup(12)
        >>> G = S.sylow_subgroup(2)
        >>> C = G.composition_series()
        >>> [H.order() for H in C]
        [1024, 512, 256, 128, 64, 32, 16, 8, 4, 2, 1]
        >>> G = S.sylow_subgroup(3)
        >>> C = G.composition_series()
        >>> [H.order() for H in C]
        [243, 81, 27, 9, 3, 1]
        >>> G = CyclicGroup(12)
        >>> C = G.composition_series()
        >>> [H.order() for H in C]
        [12, 6, 3, 1]

        """
        der = self.derived_series()
        if not (all(g.is_identity for g in der[-1].generators)):
            raise NotImplementedError('Group should be solvable')
        series = []

        for i in range(len(der)-1):
            H = der[i+1]
            up_seg = []
            for g in der[i].generators:
                K = PermutationGroup([g] + H.generators)
                order = K.order() // H.order()
                down_seg = []
                for p, e in factorint(order).items():
                    for j in range(e):
                        down_seg.append(PermutationGroup([g] + H.generators))
                        g = g**p
                up_seg = down_seg + up_seg
                H = K
            up_seg[0] = der[i]
            series.extend(up_seg)
        series.append(der[-1])
        return series

    def coset_transversal(self, H):
        """Return a transversal of the right cosets of self by its subgroup H
        using the second method described in [1], Subsection 4.6.7

        """

        if not H.is_subgroup(self):
            raise ValueError("The argument must be a subgroup")

        if H.order() == 1:
            return self._elements

        self._schreier_sims(base=H.base) # make G.base an extension of H.base

        base = self.base
        base_ordering = _base_ordering(base, self.degree)
        identity = Permutation(self.degree - 1)

        transversals = self.basic_transversals[:]
        # transversals is a list of dictionaries. Get rid of the keys
        # so that it is a list of lists and sort each list in
        # the increasing order of base[l]^x
        for l, t in enumerate(transversals):
            transversals[l] = sorted(t.values(),
                                key = lambda x: base_ordering[base[l]^x])

        orbits = H.basic_orbits
        h_stabs = H.basic_stabilizers
        g_stabs = self.basic_stabilizers

        indices = [x.order()//y.order() for x, y in zip(g_stabs, h_stabs)]

        # T^(l) should be a right transversal of H^(l) in G^(l) for
        # 1<=l<=len(base). While H^(l) is the trivial group, T^(l)
        # contains all the elements of G^(l) so we might just as well
        # start with l = len(h_stabs)-1
        if len(g_stabs) > len(h_stabs):
            T = g_stabs[len(h_stabs)]._elements
        else:
            T = [identity]
        l = len(h_stabs)-1
        t_len = len(T)
        while l > -1:
            T_next = []
            for u in transversals[l]:
                if u == identity:
                    continue
                b = base_ordering[base[l]^u]
                for t in T:
                    p = t*u
                    if all([base_ordering[h^p] >= b for h in orbits[l]]):
                        T_next.append(p)
                    if t_len + len(T_next) == indices[l]:
                        break
                if t_len + len(T_next) == indices[l]:
                    break
            T += T_next
            t_len += len(T_next)
            l -= 1
        T.remove(identity)
        T = [identity] + T
        return T

    def _coset_representative(self, g, H):
        """Return the representative of Hg from the transversal that
        would be computed by ``self.coset_transversal(H)``.

        """
        if H.order() == 1:
            return g
        # The base of self must be an extension of H.base.
        if not(self.base[:len(H.base)] == H.base):
            self._schreier_sims(base=H.base)
        orbits = H.basic_orbits[:]
        h_transversals = [list(_.values()) for _ in H.basic_transversals]
        transversals = [list(_.values()) for _ in self.basic_transversals]
        base = self.base
        base_ordering = _base_ordering(base, self.degree)
        def step(l, x):
            gamma = sorted(orbits[l], key = lambda y: base_ordering[y^x])[0]
            i = [base[l]^h for h in h_transversals[l]].index(gamma)
            x = h_transversals[l][i]*x
            if l < len(orbits)-1:
                for u in transversals[l]:
                    if base[l]^u == base[l]^x:
                        break
                x = step(l+1, x*u**-1)*u
            return x
        return step(0, g)

    def coset_table(self, H):
        """Return the standardised (right) coset table of self in H as
        a list of lists.
        """
        # Maybe this should be made to return an instance of CosetTable
        # from fp_groups.py but the class would need to be changed first
        # to be compatible with PermutationGroups

        from itertools import chain, product
        if not H.is_subgroup(self):
            raise ValueError("The argument must be a subgroup")
        T = self.coset_transversal(H)
        n = len(T)

        A = list(chain.from_iterable((gen, gen**-1)
                    for gen in self.generators))

        table = []
        for i in range(n):
            row = [self._coset_representative(T[i]*x, H) for x in A]
            row = [T.index(r) for r in row]
            table.append(row)

        # standardize (this is the same as the algorithm used in coset_table)
        # If CosetTable is made compatible with PermutationGroups, this
        # should be replaced by table.standardize()
        A = range(len(A))
        gamma = 1
        for alpha, a in product(range(n), A):
            beta = table[alpha][a]
            if beta >= gamma:
                if beta > gamma:
                    for x in A:
                        z = table[gamma][x]
                        table[gamma][x] = table[beta][x]
                        table[beta][x] = z
                        for i in range(n):
                            if table[i][x] == beta:
                                table[i][x] = gamma
                            elif table[i][x] == gamma:
                                table[i][x] = beta
                gamma += 1
            if gamma >= n-1:
                return table

    def center(self):
        r"""
        Return the center of a permutation group.

        Explanation
        ===========

        The center for a group `G` is defined as
        `Z(G) = \{z\in G | \forall g\in G, zg = gz \}`,
        the set of elements of `G` that commute with all elements of `G`.
        It is equal to the centralizer of `G` inside `G`, and is naturally a
        subgroup of `G` ([9]).

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> D = DihedralGroup(4)
        >>> G = D.center()
        >>> G.order()
        2

        See Also
        ========

        centralizer

        Notes
        =====

        This is a naive implementation that is a straightforward application
        of ``.centralizer()``

        """
        return self.centralizer(self)

    def centralizer(self, other):
        r"""
        Return the centralizer of a group/set/element.

        Explanation
        ===========

        The centralizer of a set of permutations ``S`` inside
        a group ``G`` is the set of elements of ``G`` that commute with all
        elements of ``S``::

            `C_G(S) = \{ g \in G | gs = sg \forall s \in S\}` ([10])

        Usually, ``S`` is a subset of ``G``, but if ``G`` is a proper subgroup of
        the full symmetric group, we allow for ``S`` to have elements outside
        ``G``.

        It is naturally a subgroup of ``G``; the centralizer of a permutation
        group is equal to the centralizer of any set of generators for that
        group, since any element commuting with the generators commutes with
        any product of the  generators.

        Parameters
        ==========

        other
            a permutation group/list of permutations/single permutation

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import (SymmetricGroup,
        ... CyclicGroup)
        >>> S = SymmetricGroup(6)
        >>> C = CyclicGroup(6)
        >>> H = S.centralizer(C)
        >>> H.is_subgroup(C)
        True

        See Also
        ========

        subgroup_search

        Notes
        =====

        The implementation is an application of ``.subgroup_search()`` with
        tests using a specific base for the group ``G``.

        """
        if hasattr(other, 'generators'):
            if other.is_trivial or self.is_trivial:
                return self
            degree = self.degree
            identity = _af_new(list(range(degree)))
            orbits = other.orbits()
            num_orbits = len(orbits)
            orbits.sort(key=lambda x: -len(x))
            long_base = []
            orbit_reps = [None]*num_orbits
            orbit_reps_indices = [None]*num_orbits
            orbit_descr = [None]*degree
            for i in range(num_orbits):
                orbit = list(orbits[i])
                orbit_reps[i] = orbit[0]
                orbit_reps_indices[i] = len(long_base)
                for point in orbit:
                    orbit_descr[point] = i
                long_base = long_base + orbit
            base, strong_gens = self.schreier_sims_incremental(base=long_base)
            strong_gens_distr = _distribute_gens_by_base(base, strong_gens)
            i = 0
            for i in range(len(base)):
                if strong_gens_distr[i] == [identity]:
                    break
            base = base[:i]
            base_len = i
            for j in range(num_orbits):
                if base[base_len - 1] in orbits[j]:
                    break
            rel_orbits = orbits[: j + 1]
            num_rel_orbits = len(rel_orbits)
            transversals = [None]*num_rel_orbits
            for j in range(num_rel_orbits):
                rep = orbit_reps[j]
                transversals[j] = dict(
                    other.orbit_transversal(rep, pairs=True))
            trivial_test = lambda x: True
            tests = [None]*base_len
            for l in range(base_len):
                if base[l] in orbit_reps:
                    tests[l] = trivial_test
                else:
                    def test(computed_words, l=l):
                        g = computed_words[l]
                        rep_orb_index = orbit_descr[base[l]]
                        rep = orbit_reps[rep_orb_index]
                        im = g._array_form[base[l]]
                        im_rep = g._array_form[rep]
                        tr_el = transversals[rep_orb_index][base[l]]
                        # using the definition of transversal,
                        # base[l]^g = rep^(tr_el*g);
                        # if g belongs to the centralizer, then
                        # base[l]^g = (rep^g)^tr_el
                        return im == tr_el._array_form[im_rep]
                    tests[l] = test

            def prop(g):
                return [rmul(g, gen) for gen in other.generators] == \
                       [rmul(gen, g) for gen in other.generators]
            return self.subgroup_search(prop, base=base,
                                        strong_gens=strong_gens, tests=tests)
        elif hasattr(other, '__getitem__'):
            gens = list(other)
            return self.centralizer(PermutationGroup(gens))
        elif hasattr(other, 'array_form'):
            return self.centralizer(PermutationGroup([other]))

    def commutator(self, G, H):
        """
        Return the commutator of two subgroups.

        Explanation
        ===========

        For a permutation group ``K`` and subgroups ``G``, ``H``, the
        commutator of ``G`` and ``H`` is defined as the group generated
        by all the commutators `[g, h] = hgh^{-1}g^{-1}` for ``g`` in ``G`` and
        ``h`` in ``H``. It is naturally a subgroup of ``K`` ([1], p.27).

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import (SymmetricGroup,
        ... AlternatingGroup)
        >>> S = SymmetricGroup(5)
        >>> A = AlternatingGroup(5)
        >>> G = S.commutator(S, A)
        >>> G.is_subgroup(A)
        True

        See Also
        ========

        derived_subgroup

        Notes
        =====

        The commutator of two subgroups `H, G` is equal to the normal closure
        of the commutators of all the generators, i.e. `hgh^{-1}g^{-1}` for `h`
        a generator of `H` and `g` a generator of `G` ([1], p.28)

        """
        ggens = G.generators
        hgens = H.generators
        commutators = []
        for ggen in ggens:
            for hgen in hgens:
                commutator = rmul(hgen, ggen, ~hgen, ~ggen)
                if commutator not in commutators:
                    commutators.append(commutator)
        res = self.normal_closure(commutators)
        return res

    def coset_factor(self, g, factor_index=False):
        """Return ``G``'s (self's) coset factorization of ``g``

        Explanation
        ===========

        If ``g`` is an element of ``G`` then it can be written as the product
        of permutations drawn from the Schreier-Sims coset decomposition,

        The permutations returned in ``f`` are those for which
        the product gives ``g``: ``g = f[n]*...f[1]*f[0]`` where ``n = len(B)``
        and ``B = G.base``. f[i] is one of the permutations in
        ``self._basic_orbits[i]``.

        If factor_index==True,
        returns a tuple ``[b[0],..,b[n]]``, where ``b[i]``
        belongs to ``self._basic_orbits[i]``

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, PermutationGroup
        >>> a = Permutation(0, 1, 3, 7, 6, 4)(2, 5)
        >>> b = Permutation(0, 1, 3, 2)(4, 5, 7, 6)
        >>> G = PermutationGroup([a, b])

        Define g:

        >>> g = Permutation(7)(1, 2, 4)(3, 6, 5)

        Confirm that it is an element of G:

        >>> G.contains(g)
        True

        Thus, it can be written as a product of factors (up to
        3) drawn from u. See below that a factor from u1 and u2
        and the Identity permutation have been used:

        >>> f = G.coset_factor(g)
        >>> f[2]*f[1]*f[0] == g
        True
        >>> f1 = G.coset_factor(g, True); f1
        [0, 4, 4]
        >>> tr = G.basic_transversals
        >>> f[0] == tr[0][f1[0]]
        True

        If g is not an element of G then [] is returned:

        >>> c = Permutation(5, 6, 7)
        >>> G.coset_factor(c)
        []

        See Also
        ========

        sympy.combinatorics.util._strip

        """
        if isinstance(g, (Cycle, Permutation)):
            g = g.list()
        if len(g) != self._degree:
            # this could either adjust the size or return [] immediately
            # but we don't choose between the two and just signal a possible
            # error
            raise ValueError('g should be the same size as permutations of G')
        I = list(range(self._degree))
        basic_orbits = self.basic_orbits
        transversals = self._transversals
        factors = []
        base = self.base
        h = g
        for i in range(len(base)):
            beta = h[base[i]]
            if beta == base[i]:
                factors.append(beta)
                continue
            if beta not in basic_orbits[i]:
                return []
            u = transversals[i][beta]._array_form
            h = _af_rmul(_af_invert(u), h)
            factors.append(beta)
        if h != I:
            return []
        if factor_index:
            return factors
        tr = self.basic_transversals
        factors = [tr[i][factors[i]] for i in range(len(base))]
        return factors

    def generator_product(self, g, original=False):
        '''
        Return a list of strong generators `[s1, ..., sn]`
        s.t `g = sn*...*s1`. If `original=True`, make the list
        contain only the original group generators

        '''
        product = []
        if g.is_identity:
            return []
        if g in self.strong_gens:
            if not original or g in self.generators:
                return [g]
            else:
                slp = self._strong_gens_slp[g]
                for s in slp:
                    product.extend(self.generator_product(s, original=True))
                return product
        elif g**-1 in self.strong_gens:
            g = g**-1
            if not original or g in self.generators:
                return [g**-1]
            else:
                slp = self._strong_gens_slp[g]
                for s in slp:
                    product.extend(self.generator_product(s, original=True))
                l = len(product)
                product = [product[l-i-1]**-1 for i in range(l)]
                return product

        f = self.coset_factor(g, True)
        for i, j in enumerate(f):
            slp = self._transversal_slp[i][j]
            for s in slp:
                if not original:
                    product.append(self.strong_gens[s])
                else:
                    s = self.strong_gens[s]
                    product.extend(self.generator_product(s, original=True))
        return product

    def coset_rank(self, g):
        """rank using Schreier-Sims representation.

        Explanation
        ===========

        The coset rank of ``g`` is the ordering number in which
        it appears in the lexicographic listing according to the
        coset decomposition

        The ordering is the same as in G.generate(method='coset').
        If ``g`` does not belong to the group it returns None.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation(0, 1, 3, 7, 6, 4)(2, 5)
        >>> b = Permutation(0, 1, 3, 2)(4, 5, 7, 6)
        >>> G = PermutationGroup([a, b])
        >>> c = Permutation(7)(2, 4)(3, 5)
        >>> G.coset_rank(c)
        16
        >>> G.coset_unrank(16)
        (7)(2 4)(3 5)

        See Also
        ========

        coset_factor

        """
        factors = self.coset_factor(g, True)
        if not factors:
            return None
        rank = 0
        b = 1
        transversals = self._transversals
        base = self._base
        basic_orbits = self._basic_orbits
        for i in range(len(base)):
            k = factors[i]
            j = basic_orbits[i].index(k)
            rank += b*j
            b = b*len(transversals[i])
        return rank

    def coset_unrank(self, rank, af=False):
        """unrank using Schreier-Sims representation

        coset_unrank is the inverse operation of coset_rank
        if 0 <= rank < order; otherwise it returns None.

        """
        if rank < 0 or rank >= self.order():
            return None
        base = self.base
        transversals = self.basic_transversals
        basic_orbits = self.basic_orbits
        m = len(base)
        v = [0]*m
        for i in range(m):
            rank, c = divmod(rank, len(transversals[i]))
            v[i] = basic_orbits[i][c]
        a = [transversals[i][v[i]]._array_form for i in range(m)]
        h = _af_rmuln(*a)
        if af:
            return h
        else:
            return _af_new(h)

    @property
    def degree(self):
        """Returns the size of the permutations in the group.

        Explanation
        ===========

        The number of permutations comprising the group is given by
        ``len(group)``; the number of permutations that can be generated
        by the group is given by ``group.order()``.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([1, 0, 2])
        >>> G = PermutationGroup([a])
        >>> G.degree
        3
        >>> len(G)
        1
        >>> G.order()
        2
        >>> list(G.generate())
        [(2), (2)(0 1)]

        See Also
        ========

        order
        """
        return self._degree

    @property
    def identity(self):
        '''
        Return the identity element of the permutation group.

        '''
        return _af_new(list(range(self.degree)))

    @property
    def elements(self):
        """Returns all the elements of the permutation group as a set

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, PermutationGroup
        >>> p = PermutationGroup(Permutation(1, 3), Permutation(1, 2))
        >>> p.elements
        {(1 2 3), (1 3 2), (1 3), (2 3), (3), (3)(1 2)}

        """
        return set(self._elements)

    @property
    def _elements(self):
        """Returns all the elements of the permutation group as a list

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, PermutationGroup
        >>> p = PermutationGroup(Permutation(1, 3), Permutation(1, 2))
        >>> p._elements
        [(3), (3)(1 2), (1 3), (2 3), (1 2 3), (1 3 2)]

        """
        return list(islice(self.generate(), None))

    def derived_series(self):
        r"""Return the derived series for the group.

        Explanation
        ===========

        The derived series for a group `G` is defined as
        `G = G_0 > G_1 > G_2 > \ldots` where `G_i = [G_{i-1}, G_{i-1}]`,
        i.e. `G_i` is the derived subgroup of `G_{i-1}`, for
        `i\in\mathbb{N}`. When we have `G_k = G_{k-1}` for some
        `k\in\mathbb{N}`, the series terminates.

        Returns
        =======

        A list of permutation groups containing the members of the derived
        series in the order `G = G_0, G_1, G_2, \ldots`.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import (SymmetricGroup,
        ... AlternatingGroup, DihedralGroup)
        >>> A = AlternatingGroup(5)
        >>> len(A.derived_series())
        1
        >>> S = SymmetricGroup(4)
        >>> len(S.derived_series())
        4
        >>> S.derived_series()[1].is_subgroup(AlternatingGroup(4))
        True
        >>> S.derived_series()[2].is_subgroup(DihedralGroup(2))
        True

        See Also
        ========

        derived_subgroup

        """
        res = [self]
        current = self
        next = self.derived_subgroup()
        while not current.is_subgroup(next):
            res.append(next)
            current = next
            next = next.derived_subgroup()
        return res

    def derived_subgroup(self):
        r"""Compute the derived subgroup.

        Explanation
        ===========

        The derived subgroup, or commutator subgroup is the subgroup generated
        by all commutators `[g, h] = hgh^{-1}g^{-1}` for `g, h\in G` ; it is
        equal to the normal closure of the set of commutators of the generators
        ([1], p.28, [11]).

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([1, 0, 2, 4, 3])
        >>> b = Permutation([0, 1, 3, 2, 4])
        >>> G = PermutationGroup([a, b])
        >>> C = G.derived_subgroup()
        >>> list(C.generate(af=True))
        [[0, 1, 2, 3, 4], [0, 1, 3, 4, 2], [0, 1, 4, 2, 3]]

        See Also
        ========

        derived_series

        """
        r = self._r
        gens = [p._array_form for p in self.generators]
        set_commutators = set()
        degree = self._degree
        rng = list(range(degree))
        for i in range(r):
            for j in range(r):
                p1 = gens[i]
                p2 = gens[j]
                c = list(range(degree))
                for k in rng:
                    c[p2[p1[k]]] = p1[p2[k]]
                ct = tuple(c)
                if not ct in set_commutators:
                    set_commutators.add(ct)
        cms = [_af_new(p) for p in set_commutators]
        G2 = self.normal_closure(cms)
        return G2

    def generate(self, method="coset", af=False):
        """Return iterator to generate the elements of the group.

        Explanation
        ===========

        Iteration is done with one of these methods::

          method='coset'  using the Schreier-Sims coset representation
          method='dimino' using the Dimino method

        If ``af = True`` it yields the array form of the permutations

        Examples
        ========

        >>> from sympy.combinatorics import PermutationGroup
        >>> from sympy.combinatorics.polyhedron import tetrahedron

        The permutation group given in the tetrahedron object is also
        true groups:

        >>> G = tetrahedron.pgroup
        >>> G.is_group
        True

        Also the group generated by the permutations in the tetrahedron
        pgroup -- even the first two -- is a proper group:

        >>> H = PermutationGroup(G[0], G[1])
        >>> J = PermutationGroup(list(H.generate())); J
        PermutationGroup([
            (0 1)(2 3),
            (1 2 3),
            (1 3 2),
            (0 3 1),
            (0 2 3),
            (0 3)(1 2),
            (0 1 3),
            (3)(0 2 1),
            (0 3 2),
            (3)(0 1 2),
            (0 2)(1 3)])
        >>> _.is_group
        True
        """
        if method == "coset":
            return self.generate_schreier_sims(af)
        elif method == "dimino":
            return self.generate_dimino(af)
        else:
            raise NotImplementedError('No generation defined for %s' % method)

    def generate_dimino(self, af=False):
        """Yield group elements using Dimino's algorithm.

        If ``af == True`` it yields the array form of the permutations.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([0, 2, 1, 3])
        >>> b = Permutation([0, 2, 3, 1])
        >>> g = PermutationGroup([a, b])
        >>> list(g.generate_dimino(af=True))
        [[0, 1, 2, 3], [0, 2, 1, 3], [0, 2, 3, 1],
         [0, 1, 3, 2], [0, 3, 2, 1], [0, 3, 1, 2]]

        References
        ==========

        .. [1] The Implementation of Various Algorithms for Permutation Groups in
               the Computer Algebra System: AXIOM, N.J. Doye, M.Sc. Thesis

        """
        idn = list(range(self.degree))
        order = 0
        element_list = [idn]
        set_element_list = {tuple(idn)}
        if af:
            yield idn
        else:
            yield _af_new(idn)
        gens = [p._array_form for p in self.generators]

        for i in range(len(gens)):
            # D elements of the subgroup G_i generated by gens[:i]
            D = element_list[:]
            N = [idn]
            while N:
                A = N
                N = []
                for a in A:
                    for g in gens[:i + 1]:
                        ag = _af_rmul(a, g)
                        if tuple(ag) not in set_element_list:
                            # produce G_i*g
                            for d in D:
                                order += 1
                                ap = _af_rmul(d, ag)
                                if af:
                                    yield ap
                                else:
                                    p = _af_new(ap)
                                    yield p
                                element_list.append(ap)
                                set_element_list.add(tuple(ap))
                                N.append(ap)
        self._order = len(element_list)

    def generate_schreier_sims(self, af=False):
        """Yield group elements using the Schreier-Sims representation
        in coset_rank order

        If ``af = True`` it yields the array form of the permutations

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([0, 2, 1, 3])
        >>> b = Permutation([0, 2, 3, 1])
        >>> g = PermutationGroup([a, b])
        >>> list(g.generate_schreier_sims(af=True))
        [[0, 1, 2, 3], [0, 2, 1, 3], [0, 3, 2, 1],
         [0, 1, 3, 2], [0, 2, 3, 1], [0, 3, 1, 2]]
        """

        n = self._degree
        u = self.basic_transversals
        basic_orbits = self._basic_orbits
        if len(u) == 0:
            for x in self.generators:
                if af:
                    yield x._array_form
                else:
                    yield x
            return
        if len(u) == 1:
            for i in basic_orbits[0]:
                if af:
                    yield u[0][i]._array_form
                else:
                    yield u[0][i]
            return

        u = list(reversed(u))
        basic_orbits = basic_orbits[::-1]
        # stg stack of group elements
        stg = [list(range(n))]
        posmax = [len(x) for x in u]
        n1 = len(posmax) - 1
        pos = [0]*n1
        h = 0
        while 1:
            # backtrack when finished iterating over coset
            if pos[h] >= posmax[h]:
                if h == 0:
                    return
                pos[h] = 0
                h -= 1
                stg.pop()
                continue
            p = _af_rmul(u[h][basic_orbits[h][pos[h]]]._array_form, stg[-1])
            pos[h] += 1
            stg.append(p)
            h += 1
            if h == n1:
                if af:
                    for i in basic_orbits[-1]:
                        p = _af_rmul(u[-1][i]._array_form, stg[-1])
                        yield p
                else:
                    for i in basic_orbits[-1]:
                        p = _af_rmul(u[-1][i]._array_form, stg[-1])
                        p1 = _af_new(p)
                        yield p1
                stg.pop()
                h -= 1

    @property
    def generators(self):
        """Returns the generators of the group.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([0, 2, 1])
        >>> b = Permutation([1, 0, 2])
        >>> G = PermutationGroup([a, b])
        >>> G.generators
        [(1 2), (2)(0 1)]

        """
        return self._generators

    def contains(self, g, strict=True):
        """Test if permutation ``g`` belong to self, ``G``.

        Explanation
        ===========

        If ``g`` is an element of ``G`` it can be written as a product
        of factors drawn from the cosets of ``G``'s stabilizers. To see
        if ``g`` is one of the actual generators defining the group use
        ``G.has(g)``.

        If ``strict`` is not ``True``, ``g`` will be resized, if necessary,
        to match the size of permutations in ``self``.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup

        >>> a = Permutation(1, 2)
        >>> b = Permutation(2, 3, 1)
        >>> G = PermutationGroup(a, b, degree=5)
        >>> G.contains(G[0]) # trivial check
        True
        >>> elem = Permutation([[2, 3]], size=5)
        >>> G.contains(elem)
        True
        >>> G.contains(Permutation(4)(0, 1, 2, 3))
        False

        If strict is False, a permutation will be resized, if
        necessary:

        >>> H = PermutationGroup(Permutation(5))
        >>> H.contains(Permutation(3))
        False
        >>> H.contains(Permutation(3), strict=False)
        True

        To test if a given permutation is present in the group:

        >>> elem in G.generators
        False
        >>> G.has(elem)
        False

        See Also
        ========

        coset_factor, sympy.core.basic.Basic.has, __contains__

        """
        if not isinstance(g, Permutation):
            return False
        if g.size != self.degree:
            if strict:
                return False
            g = Permutation(g, size=self.degree)
        if g in self.generators:
            return True
        return bool(self.coset_factor(g.array_form, True))

    @property
    def is_perfect(self):
        """Return ``True`` if the group is perfect.
        A group is perfect if it equals to its derived subgroup.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation(1,2,3)(4,5)
        >>> b = Permutation(1,2,3,4,5)
        >>> G = PermutationGroup([a, b])
        >>> G.is_perfect
        False

        """
        if self._is_perfect is None:
            self._is_perfect = self == self.derived_subgroup()
        return self._is_perfect

    @property
    def is_abelian(self):
        """Test if the group is Abelian.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([0, 2, 1])
        >>> b = Permutation([1, 0, 2])
        >>> G = PermutationGroup([a, b])
        >>> G.is_abelian
        False
        >>> a = Permutation([0, 2, 1])
        >>> G = PermutationGroup([a])
        >>> G.is_abelian
        True

        """
        if self._is_abelian is not None:
            return self._is_abelian

        self._is_abelian = True
        gens = [p._array_form for p in self.generators]
        for x in gens:
            for y in gens:
                if y <= x:
                    continue
                if not _af_commutes_with(x, y):
                    self._is_abelian = False
                    return False
        return True

    def abelian_invariants(self):
        """
        Returns the abelian invariants for the given group.
        Let ``G`` be a nontrivial finite abelian group. Then G is isomorphic to
        the direct product of finitely many nontrivial cyclic groups of
        prime-power order.

        Explanation
        ===========

        The prime-powers that occur as the orders of the factors are uniquely
        determined by G. More precisely, the primes that occur in the orders of the
        factors in any such decomposition of ``G`` are exactly the primes that divide
        ``|G|`` and for any such prime ``p``, if the orders of the factors that are
        p-groups in one such decomposition of ``G`` are ``p^{t_1} >= p^{t_2} >= ... p^{t_r}``,
        then the orders of the factors that are p-groups in any such decomposition of ``G``
        are ``p^{t_1} >= p^{t_2} >= ... p^{t_r}``.

        The uniquely determined integers ``p^{t_1} >= p^{t_2} >= ... p^{t_r}``, taken
        for all primes that divide ``|G|`` are called the invariants of the nontrivial
        group ``G`` as suggested in ([14], p. 542).

        Notes
        =====

        We adopt the convention that the invariants of a trivial group are [].

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([0, 2, 1])
        >>> b = Permutation([1, 0, 2])
        >>> G = PermutationGroup([a, b])
        >>> G.abelian_invariants()
        [2]
        >>> from sympy.combinatorics.named_groups import CyclicGroup
        >>> G = CyclicGroup(7)
        >>> G.abelian_invariants()
        [7]

        """
        if self.is_trivial:
            return []
        gns = self.generators
        inv = []
        G = self
        H = G.derived_subgroup()
        Hgens = H.generators
        for p in primefactors(G.order()):
            ranks = []
            while True:
                pows = []
                for g in gns:
                    elm = g**p
                    if not H.contains(elm):
                        pows.append(elm)
                K = PermutationGroup(Hgens + pows) if pows else H
                r = G.order()//K.order()
                G = K
                gns = pows
                if r == 1:
                    break;
                ranks.append(multiplicity(p, r))

            if ranks:
                pows = [1]*ranks[0]
                for i in ranks:
                    for j in range(0, i):
                        pows[j] = pows[j]*p
                inv.extend(pows)
        inv.sort()
        return inv

    def is_elementary(self, p):
        """Return ``True`` if the group is elementary abelian. An elementary
        abelian group is a finite abelian group, where every nontrivial
        element has order `p`, where `p` is a prime.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([0, 2, 1])
        >>> G = PermutationGroup([a])
        >>> G.is_elementary(2)
        True
        >>> a = Permutation([0, 2, 1, 3])
        >>> b = Permutation([3, 1, 2, 0])
        >>> G = PermutationGroup([a, b])
        >>> G.is_elementary(2)
        True
        >>> G.is_elementary(3)
        False

        """
        return self.is_abelian and all(g.order() == p for g in self.generators)

    def _eval_is_alt_sym_naive(self, only_sym=False, only_alt=False):
        """A naive test using the group order."""
        if only_sym and only_alt:
            raise ValueError(
                "Both {} and {} cannot be set to True"
                .format(only_sym, only_alt))

        n = self.degree
        sym_order = 1
        for i in range(2, n+1):
            sym_order *= i
        order = self.order()

        if order == sym_order:
            self._is_sym = True
            self._is_alt = False
            if only_alt:
                return False
            return True

        elif 2*order == sym_order:
            self._is_sym = False
            self._is_alt = True
            if only_sym:
                return False
            return True

        return False

    def _eval_is_alt_sym_monte_carlo(self, eps=0.05, perms=None):
        """A test using monte-carlo algorithm.

        Parameters
        ==========

        eps : float, optional
            The criterion for the incorrect ``False`` return.

        perms : list[Permutation], optional
            If explicitly given, it tests over the given candidats
            for testing.

            If ``None``, it randomly computes ``N_eps`` and chooses
            ``N_eps`` sample of the permutation from the group.

        See Also
        ========

        _check_cycles_alt_sym
        """
        if perms is None:
            n = self.degree
            if n < 17:
                c_n = 0.34
            else:
                c_n = 0.57
            d_n = (c_n*log(2))/log(n)
            N_eps = int(-log(eps)/d_n)

            perms = (self.random_pr() for i in range(N_eps))
            return self._eval_is_alt_sym_monte_carlo(perms=perms)

        for perm in perms:
            if _check_cycles_alt_sym(perm):
                return True
        return False

    def is_alt_sym(self, eps=0.05, _random_prec=None):
        r"""Monte Carlo test for the symmetric/alternating group for degrees
        >= 8.

        Explanation
        ===========

        More specifically, it is one-sided Monte Carlo with the
        answer True (i.e., G is symmetric/alternating) guaranteed to be
        correct, and the answer False being incorrect with probability eps.

        For degree < 8, the order of the group is checked so the test
        is deterministic.

        Notes
        =====

        The algorithm itself uses some nontrivial results from group theory and
        number theory:
        1) If a transitive group ``G`` of degree ``n`` contains an element
        with a cycle of length ``n/2 < p < n-2`` for ``p`` a prime, ``G`` is the
        symmetric or alternating group ([1], pp. 81-82)
        2) The proportion of elements in the symmetric/alternating group having
        the property described in 1) is approximately `\log(2)/\log(n)`
        ([1], p.82; [2], pp. 226-227).
        The helper function ``_check_cycles_alt_sym`` is used to
        go over the cycles in a permutation and look for ones satisfying 1).

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> D = DihedralGroup(10)
        >>> D.is_alt_sym()
        False

        See Also
        ========

        _check_cycles_alt_sym

        """
        if _random_prec is not None:
            N_eps = _random_prec['N_eps']
            perms= (_random_prec[i] for i in range(N_eps))
            return self._eval_is_alt_sym_monte_carlo(perms=perms)

        if self._is_sym or self._is_alt:
            return True
        if self._is_sym is False and self._is_alt is False:
            return False

        n = self.degree
        if n < 8:
            return self._eval_is_alt_sym_naive()
        elif self.is_transitive():
            return self._eval_is_alt_sym_monte_carlo(eps=eps)

        self._is_sym, self._is_alt = False, False
        return False

    @property
    def is_nilpotent(self):
        """Test if the group is nilpotent.

        Explanation
        ===========

        A group `G` is nilpotent if it has a central series of finite length.
        Alternatively, `G` is nilpotent if its lower central series terminates
        with the trivial group. Every nilpotent group is also solvable
        ([1], p.29, [12]).

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import (SymmetricGroup,
        ... CyclicGroup)
        >>> C = CyclicGroup(6)
        >>> C.is_nilpotent
        True
        >>> S = SymmetricGroup(5)
        >>> S.is_nilpotent
        False

        See Also
        ========

        lower_central_series, is_solvable

        """
        if self._is_nilpotent is None:
            lcs = self.lower_central_series()
            terminator = lcs[len(lcs) - 1]
            gens = terminator.generators
            degree = self.degree
            identity = _af_new(list(range(degree)))
            if all(g == identity for g in gens):
                self._is_solvable = True
                self._is_nilpotent = True
                return True
            else:
                self._is_nilpotent = False
                return False
        else:
            return self._is_nilpotent

    def is_normal(self, gr, strict=True):
        """Test if ``G=self`` is a normal subgroup of ``gr``.

        Explanation
        ===========

        G is normal in gr if
        for each g2 in G, g1 in gr, ``g = g1*g2*g1**-1`` belongs to G
        It is sufficient to check this for each g1 in gr.generators and
        g2 in G.generators.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([1, 2, 0])
        >>> b = Permutation([1, 0, 2])
        >>> G = PermutationGroup([a, b])
        >>> G1 = PermutationGroup([a, Permutation([2, 0, 1])])
        >>> G1.is_normal(G)
        True

        """
        if not self.is_subgroup(gr, strict=strict):
            return False
        d_self = self.degree
        d_gr = gr.degree
        if self.is_trivial and (d_self == d_gr or not strict):
            return True
        if self._is_abelian:
            return True
        new_self = self.copy()
        if not strict and d_self != d_gr:
            if d_self < d_gr:
                new_self = PermGroup(new_self.generators + [Permutation(d_gr - 1)])
            else:
                gr = PermGroup(gr.generators + [Permutation(d_self - 1)])
        gens2 = [p._array_form for p in new_self.generators]
        gens1 = [p._array_form for p in gr.generators]
        for g1 in gens1:
            for g2 in gens2:
                p = _af_rmuln(g1, g2, _af_invert(g1))
                if not new_self.coset_factor(p, True):
                    return False
        return True

    def is_primitive(self, randomized=True):
        r"""Test if a group is primitive.

        Explanation
        ===========

        A permutation group ``G`` acting on a set ``S`` is called primitive if
        ``S`` contains no nontrivial block under the action of ``G``
        (a block is nontrivial if its cardinality is more than ``1``).

        Notes
        =====

        The algorithm is described in [1], p.83, and uses the function
        minimal_block to search for blocks of the form `\{0, k\}` for ``k``
        ranging over representatives for the orbits of `G_0`, the stabilizer of
        ``0``. This algorithm has complexity `O(n^2)` where ``n`` is the degree
        of the group, and will perform badly if `G_0` is small.

        There are two implementations offered: one finds `G_0`
        deterministically using the function ``stabilizer``, and the other
        (default) produces random elements of `G_0` using ``random_stab``,
        hoping that they generate a subgroup of `G_0` with not too many more
        orbits than `G_0` (this is suggested in [1], p.83). Behavior is changed
        by the ``randomized`` flag.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> D = DihedralGroup(10)
        >>> D.is_primitive()
        False

        See Also
        ========

        minimal_block, random_stab

        """
        if self._is_primitive is not None:
            return self._is_primitive

        if self.is_transitive() is False:
            return False

        if randomized:
            random_stab_gens = []
            v = self.schreier_vector(0)
            for i in range(len(self)):
                random_stab_gens.append(self.random_stab(0, v))
            stab = PermutationGroup(random_stab_gens)
        else:
            stab = self.stabilizer(0)
        orbits = stab.orbits()
        for orb in orbits:
            x = orb.pop()
            if x != 0 and any(e != 0 for e in self.minimal_block([0, x])):
                self._is_primitive = False
                return False
        self._is_primitive = True
        return True

    def minimal_blocks(self, randomized=True):
        '''
        For a transitive group, return the list of all minimal
        block systems. If a group is intransitive, return `False`.

        Examples
        ========
        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> DihedralGroup(6).minimal_blocks()
        [[0, 1, 0, 1, 0, 1], [0, 1, 2, 0, 1, 2]]
        >>> G = PermutationGroup(Permutation(1,2,5))
        >>> G.minimal_blocks()
        False

        See Also
        ========

        minimal_block, is_transitive, is_primitive

        '''
        def _number_blocks(blocks):
            # number the blocks of a block system
            # in order and return the number of
            # blocks and the tuple with the
            # reordering
            n = len(blocks)
            appeared = {}
            m = 0
            b = [None]*n
            for i in range(n):
                if blocks[i] not in appeared:
                    appeared[blocks[i]] = m
                    b[i] = m
                    m += 1
                else:
                    b[i] = appeared[blocks[i]]
            return tuple(b), m

        if not self.is_transitive():
            return False
        blocks = []
        num_blocks = []
        rep_blocks = []
        if randomized:
            random_stab_gens = []
            v = self.schreier_vector(0)
            for i in range(len(self)):
                random_stab_gens.append(self.random_stab(0, v))
            stab = PermutationGroup(random_stab_gens)
        else:
            stab = self.stabilizer(0)
        orbits = stab.orbits()
        for orb in orbits:
            x = orb.pop()
            if x != 0:
                block = self.minimal_block([0, x])
                num_block, m = _number_blocks(block)
                # a representative block (containing 0)
                rep = {j for j in range(self.degree) if num_block[j] == 0}
                # check if the system is minimal with
                # respect to the already discovere ones
                minimal = True
                blocks_remove_mask = [False] * len(blocks)
                for i, r in enumerate(rep_blocks):
                    if len(r) > len(rep) and rep.issubset(r):
                        # i-th block system is not minimal
                        blocks_remove_mask[i] = True
                    elif len(r) < len(rep) and r.issubset(rep):
                        # the system being checked is not minimal
                        minimal = False
                        break
                # remove non-minimal representative blocks
                blocks = [b for i, b in enumerate(blocks) if not blocks_remove_mask[i]]
                num_blocks = [n for i, n in enumerate(num_blocks) if not blocks_remove_mask[i]]
                rep_blocks = [r for i, r in enumerate(rep_blocks) if not blocks_remove_mask[i]]

                if minimal and num_block not in num_blocks:
                    blocks.append(block)
                    num_blocks.append(num_block)
                    rep_blocks.append(rep)
        return blocks

    @property
    def is_solvable(self):
        """Test if the group is solvable.

        ``G`` is solvable if its derived series terminates with the trivial
        group ([1], p.29).

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import SymmetricGroup
        >>> S = SymmetricGroup(3)
        >>> S.is_solvable
        True

        See Also
        ========

        is_nilpotent, derived_series

        """
        if self._is_solvable is None:
            if self.order() % 2 != 0:
                return True
            ds = self.derived_series()
            terminator = ds[len(ds) - 1]
            gens = terminator.generators
            degree = self.degree
            identity = _af_new(list(range(degree)))
            if all(g == identity for g in gens):
                self._is_solvable = True
                return True
            else:
                self._is_solvable = False
                return False
        else:
            return self._is_solvable

    def is_subgroup(self, G, strict=True):
        """Return ``True`` if all elements of ``self`` belong to ``G``.

        If ``strict`` is ``False`` then if ``self``'s degree is smaller
        than ``G``'s, the elements will be resized to have the same degree.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, PermutationGroup
        >>> from sympy.combinatorics.named_groups import (SymmetricGroup,
        ...    CyclicGroup)

        Testing is strict by default: the degree of each group must be the
        same:

        >>> p = Permutation(0, 1, 2, 3, 4, 5)
        >>> G1 = PermutationGroup([Permutation(0, 1, 2), Permutation(0, 1)])
        >>> G2 = PermutationGroup([Permutation(0, 2), Permutation(0, 1, 2)])
        >>> G3 = PermutationGroup([p, p**2])
        >>> assert G1.order() == G2.order() == G3.order() == 6
        >>> G1.is_subgroup(G2)
        True
        >>> G1.is_subgroup(G3)
        False
        >>> G3.is_subgroup(PermutationGroup(G3[1]))
        False
        >>> G3.is_subgroup(PermutationGroup(G3[0]))
        True

        To ignore the size, set ``strict`` to ``False``:

        >>> S3 = SymmetricGroup(3)
        >>> S5 = SymmetricGroup(5)
        >>> S3.is_subgroup(S5, strict=False)
        True
        >>> C7 = CyclicGroup(7)
        >>> G = S5*C7
        >>> S5.is_subgroup(G, False)
        True
        >>> C7.is_subgroup(G, 0)
        False

        """
        if isinstance(G, SymmetricPermutationGroup):
            if self.degree != G.degree:
                return False
            return True
        if not isinstance(G, PermutationGroup):
            return False
        if self == G or self.generators[0]==Permutation():
            return True
        if G.order() % self.order() != 0:
            return False
        if self.degree == G.degree or \
                (self.degree < G.degree and not strict):
            gens = self.generators
        else:
            return False
        return all(G.contains(g, strict=strict) for g in gens)

    @property
    def is_polycyclic(self):
        """Return ``True`` if a group is polycyclic. A group is polycyclic if
        it has a subnormal series with cyclic factors. For finite groups,
        this is the same as if the group is solvable.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, PermutationGroup
        >>> a = Permutation([0, 2, 1, 3])
        >>> b = Permutation([2, 0, 1, 3])
        >>> G = PermutationGroup([a, b])
        >>> G.is_polycyclic
        True

        """
        return self.is_solvable

    def is_transitive(self, strict=True):
        """Test if the group is transitive.

        Explanation
        ===========

        A group is transitive if it has a single orbit.

        If ``strict`` is ``False`` the group is transitive if it has
        a single orbit of length different from 1.

        Examples
        ========

        >>> from sympy.combinatorics.permutations import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([0, 2, 1, 3])
        >>> b = Permutation([2, 0, 1, 3])
        >>> G1 = PermutationGroup([a, b])
        >>> G1.is_transitive()
        False
        >>> G1.is_transitive(strict=False)
        True
        >>> c = Permutation([2, 3, 0, 1])
        >>> G2 = PermutationGroup([a, c])
        >>> G2.is_transitive()
        True
        >>> d = Permutation([1, 0, 2, 3])
        >>> e = Permutation([0, 1, 3, 2])
        >>> G3 = PermutationGroup([d, e])
        >>> G3.is_transitive() or G3.is_transitive(strict=False)
        False

        """
        if self._is_transitive:  # strict or not, if True then True
            return self._is_transitive
        if strict:
            if self._is_transitive is not None:  # we only store strict=True
                return self._is_transitive

            ans = len(self.orbit(0)) == self.degree
            self._is_transitive = ans
            return ans

        got_orb = False
        for x in self.orbits():
            if len(x) > 1:
                if got_orb:
                    return False
                got_orb = True
        return got_orb

    @property
    def is_trivial(self):
        """Test if the group is the trivial group.

        This is true if the group contains only the identity permutation.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> G = PermutationGroup([Permutation([0, 1, 2])])
        >>> G.is_trivial
        True

        """
        if self._is_trivial is None:
            self._is_trivial = len(self) == 1 and self[0].is_Identity
        return self._is_trivial

    def lower_central_series(self):
        r"""Return the lower central series for the group.

        The lower central series for a group `G` is the series
        `G = G_0 > G_1 > G_2 > \ldots` where
        `G_k = [G, G_{k-1}]`, i.e. every term after the first is equal to the
        commutator of `G` and the previous term in `G1` ([1], p.29).

        Returns
        =======

        A list of permutation groups in the order `G = G_0, G_1, G_2, \ldots`

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import (AlternatingGroup,
        ... DihedralGroup)
        >>> A = AlternatingGroup(4)
        >>> len(A.lower_central_series())
        2
        >>> A.lower_central_series()[1].is_subgroup(DihedralGroup(2))
        True

        See Also
        ========

        commutator, derived_series

        """
        res = [self]
        current = self
        next = self.commutator(self, current)
        while not current.is_subgroup(next):
            res.append(next)
            current = next
            next = self.commutator(self, current)
        return res

    @property
    def max_div(self):
        """Maximum proper divisor of the degree of a permutation group.

        Explanation
        ===========

        Obviously, this is the degree divided by its minimal proper divisor
        (larger than ``1``, if one exists). As it is guaranteed to be prime,
        the ``sieve`` from ``sympy.ntheory`` is used.
        This function is also used as an optimization tool for the functions
        ``minimal_block`` and ``_union_find_merge``.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> G = PermutationGroup([Permutation([0, 2, 1, 3])])
        >>> G.max_div
        2

        See Also
        ========

        minimal_block, _union_find_merge

        """
        if self._max_div is not None:
            return self._max_div
        n = self.degree
        if n == 1:
            return 1
        for x in sieve:
            if n % x == 0:
                d = n//x
                self._max_div = d
                return d

    def minimal_block(self, points):
        r"""For a transitive group, finds the block system generated by
        ``points``.

        Explanation
        ===========

        If a group ``G`` acts on a set ``S``, a nonempty subset ``B`` of ``S``
        is called a block under the action of ``G`` if for all ``g`` in ``G``
        we have ``gB = B`` (``g`` fixes ``B``) or ``gB`` and ``B`` have no
        common points (``g`` moves ``B`` entirely). ([1], p.23; [6]).

        The distinct translates ``gB`` of a block ``B`` for ``g`` in ``G``
        partition the set ``S`` and this set of translates is known as a block
        system. Moreover, we obviously have that all blocks in the partition
        have the same size, hence the block size divides ``|S|`` ([1], p.23).
        A ``G``-congruence is an equivalence relation ``~`` on the set ``S``
        such that ``a ~ b`` implies ``g(a) ~ g(b)`` for all ``g`` in ``G``.
        For a transitive group, the equivalence classes of a ``G``-congruence
        and the blocks of a block system are the same thing ([1], p.23).

        The algorithm below checks the group for transitivity, and then finds
        the ``G``-congruence generated by the pairs ``(p_0, p_1), (p_0, p_2),
        ..., (p_0,p_{k-1})`` which is the same as finding the maximal block
        system (i.e., the one with minimum block size) such that
        ``p_0, ..., p_{k-1}`` are in the same block ([1], p.83).

        It is an implementation of Atkinson's algorithm, as suggested in [1],
        and manipulates an equivalence relation on the set ``S`` using a
        union-find data structure. The running time is just above
        `O(|points||S|)`. ([1], pp. 83-87; [7]).

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> D = DihedralGroup(10)
        >>> D.minimal_block([0, 5])
        [0, 1, 2, 3, 4, 0, 1, 2, 3, 4]
        >>> D.minimal_block([0, 1])
        [0, 0, 0, 0, 0, 0, 0, 0, 0, 0]

        See Also
        ========

        _union_find_rep, _union_find_merge, is_transitive, is_primitive

        """
        if not self.is_transitive():
            return False
        n = self.degree
        gens = self.generators
        # initialize the list of equivalence class representatives
        parents = list(range(n))
        ranks = [1]*n
        not_rep = []
        k = len(points)
        # the block size must divide the degree of the group
        if k > self.max_div:
            return [0]*n
        for i in range(k - 1):
            parents[points[i + 1]] = points[0]
            not_rep.append(points[i + 1])
        ranks[points[0]] = k
        i = 0
        len_not_rep = k - 1
        while i < len_not_rep:
            gamma = not_rep[i]
            i += 1
            for gen in gens:
                # find has side effects: performs path compression on the list
                # of representatives
                delta = self._union_find_rep(gamma, parents)
                # union has side effects: performs union by rank on the list
                # of representatives
                temp = self._union_find_merge(gen(gamma), gen(delta), ranks,
                                              parents, not_rep)
                if temp == -1:
                    return [0]*n
                len_not_rep += temp
        for i in range(n):
            # force path compression to get the final state of the equivalence
            # relation
            self._union_find_rep(i, parents)

        # rewrite result so that block representatives are minimal
        new_reps = {}
        return [new_reps.setdefault(r, i) for i, r in enumerate(parents)]

    def conjugacy_class(self, x):
        r"""Return the conjugacy class of an element in the group.

        Explanation
        ===========

        The conjugacy class of an element ``g`` in a group ``G`` is the set of
        elements ``x`` in ``G`` that are conjugate with ``g``, i.e. for which

            ``g = xax^{-1}``

        for some ``a`` in ``G``.

        Note that conjugacy is an equivalence relation, and therefore that
        conjugacy classes are partitions of ``G``. For a list of all the
        conjugacy classes of the group, use the conjugacy_classes() method.

        In a permutation group, each conjugacy class corresponds to a particular
        `cycle structure': for example, in ``S_3``, the conjugacy classes are:

            * the identity class, ``{()}``
            * all transpositions, ``{(1 2), (1 3), (2 3)}``
            * all 3-cycles, ``{(1 2 3), (1 3 2)}``

        Examples
        ========

        >>> from sympy.combinatorics.permutations import Permutation
        >>> from sympy.combinatorics.named_groups import SymmetricGroup
        >>> S3 = SymmetricGroup(3)
        >>> S3.conjugacy_class(Permutation(0, 1, 2))
        {(0 1 2), (0 2 1)}

        Notes
        =====

        This procedure computes the conjugacy class directly by finding the
        orbit of the element under conjugation in G. This algorithm is only
        feasible for permutation groups of relatively small order, but is like
        the orbit() function itself in that respect.
        """
        # Ref: "Computing the conjugacy classes of finite groups"; Butler, G.
        # Groups '93 Galway/St Andrews; edited by Campbell, C. M.
        new_class = {x}
        last_iteration = new_class

        while len(last_iteration) > 0:
            this_iteration = set()

            for y in last_iteration:
                for s in self.generators:
                    conjugated = s * y * (~s)
                    if conjugated not in new_class:
                        this_iteration.add(conjugated)

            new_class.update(last_iteration)
            last_iteration = this_iteration

        return new_class


    def conjugacy_classes(self):
        r"""Return the conjugacy classes of the group.

        Explanation
        ===========

        As described in the documentation for the .conjugacy_class() function,
        conjugacy is an equivalence relation on a group G which partitions the
        set of elements. This method returns a list of all these conjugacy
        classes of G.

        Examples
        ========

        >>> from sympy.combinatorics import SymmetricGroup
        >>> SymmetricGroup(3).conjugacy_classes()
        [{(2)}, {(0 1 2), (0 2 1)}, {(0 2), (1 2), (2)(0 1)}]

        """
        identity = _af_new(list(range(self.degree)))
        known_elements = {identity}
        classes = [known_elements.copy()]

        for x in self.generate():
            if x not in known_elements:
                new_class = self.conjugacy_class(x)
                classes.append(new_class)
                known_elements.update(new_class)

        return classes

    def normal_closure(self, other, k=10):
        r"""Return the normal closure of a subgroup/set of permutations.

        Explanation
        ===========

        If ``S`` is a subset of a group ``G``, the normal closure of ``A`` in ``G``
        is defined as the intersection of all normal subgroups of ``G`` that
        contain ``A`` ([1], p.14). Alternatively, it is the group generated by
        the conjugates ``x^{-1}yx`` for ``x`` a generator of ``G`` and ``y`` a
        generator of the subgroup ``\left\langle S\right\rangle`` generated by
        ``S`` (for some chosen generating set for ``\left\langle S\right\rangle``)
        ([1], p.73).

        Parameters
        ==========

        other
            a subgroup/list of permutations/single permutation
        k
            an implementation-specific parameter that determines the number
            of conjugates that are adjoined to ``other`` at once

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import (SymmetricGroup,
        ... CyclicGroup, AlternatingGroup)
        >>> S = SymmetricGroup(5)
        >>> C = CyclicGroup(5)
        >>> G = S.normal_closure(C)
        >>> G.order()
        60
        >>> G.is_subgroup(AlternatingGroup(5))
        True

        See Also
        ========

        commutator, derived_subgroup, random_pr

        Notes
        =====

        The algorithm is described in [1], pp. 73-74; it makes use of the
        generation of random elements for permutation groups by the product
        replacement algorithm.

        """
        if hasattr(other, 'generators'):
            degree = self.degree
            identity = _af_new(list(range(degree)))

            if all(g == identity for g in other.generators):
                return other
            Z = PermutationGroup(other.generators[:])
            base, strong_gens = Z.schreier_sims_incremental()
            strong_gens_distr = _distribute_gens_by_base(base, strong_gens)
            basic_orbits, basic_transversals = \
                _orbits_transversals_from_bsgs(base, strong_gens_distr)

            self._random_pr_init(r=10, n=20)

            _loop = True
            while _loop:
                Z._random_pr_init(r=10, n=10)
                for i in range(k):
                    g = self.random_pr()
                    h = Z.random_pr()
                    conj = h^g
                    res = _strip(conj, base, basic_orbits, basic_transversals)
                    if res[0] != identity or res[1] != len(base) + 1:
                        gens = Z.generators
                        gens.append(conj)
                        Z = PermutationGroup(gens)
                        strong_gens.append(conj)
                        temp_base, temp_strong_gens = \
                            Z.schreier_sims_incremental(base, strong_gens)
                        base, strong_gens = temp_base, temp_strong_gens
                        strong_gens_distr = \
                            _distribute_gens_by_base(base, strong_gens)
                        basic_orbits, basic_transversals = \
                            _orbits_transversals_from_bsgs(base,
                                strong_gens_distr)
                _loop = False
                for g in self.generators:
                    for h in Z.generators:
                        conj = h^g
                        res = _strip(conj, base, basic_orbits,
                                     basic_transversals)
                        if res[0] != identity or res[1] != len(base) + 1:
                            _loop = True
                            break
                    if _loop:
                        break
            return Z
        elif hasattr(other, '__getitem__'):
            return self.normal_closure(PermutationGroup(other))
        elif hasattr(other, 'array_form'):
            return self.normal_closure(PermutationGroup([other]))

    def orbit(self, alpha, action='tuples'):
        r"""Compute the orbit of alpha `\{g(\alpha) | g \in G\}` as a set.

        Explanation
        ===========

        The time complexity of the algorithm used here is `O(|Orb|*r)` where
        `|Orb|` is the size of the orbit and ``r`` is the number of generators of
        the group. For a more detailed analysis, see [1], p.78, [2], pp. 19-21.
        Here alpha can be a single point, or a list of points.

        If alpha is a single point, the ordinary orbit is computed.
        if alpha is a list of points, there are three available options:

        'union' - computes the union of the orbits of the points in the list
        'tuples' - computes the orbit of the list interpreted as an ordered
        tuple under the group action ( i.e., g((1,2,3)) = (g(1), g(2), g(3)) )
        'sets' - computes the orbit of the list interpreted as a sets

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([1, 2, 0, 4, 5, 6, 3])
        >>> G = PermutationGroup([a])
        >>> G.orbit(0)
        {0, 1, 2}
        >>> G.orbit([0, 4], 'union')
        {0, 1, 2, 3, 4, 5, 6}

        See Also
        ========

        orbit_transversal

        """
        return _orbit(self.degree, self.generators, alpha, action)

    def orbit_rep(self, alpha, beta, schreier_vector=None):
        """Return a group element which sends ``alpha`` to ``beta``.

        Explanation
        ===========

        If ``beta`` is not in the orbit of ``alpha``, the function returns
        ``False``. This implementation makes use of the schreier vector.
        For a proof of correctness, see [1], p.80

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import AlternatingGroup
        >>> G = AlternatingGroup(5)
        >>> G.orbit_rep(0, 4)
        (0 4 1 2 3)

        See Also
        ========

        schreier_vector

        """
        if schreier_vector is None:
            schreier_vector = self.schreier_vector(alpha)
        if schreier_vector[beta] is None:
            return False
        k = schreier_vector[beta]
        gens = [x._array_form for x in self.generators]
        a = []
        while k != -1:
            a.append(gens[k])
            beta = gens[k].index(beta) # beta = (~gens[k])(beta)
            k = schreier_vector[beta]
        if a:
            return _af_new(_af_rmuln(*a))
        else:
            return _af_new(list(range(self._degree)))

    def orbit_transversal(self, alpha, pairs=False):
        r"""Computes a transversal for the orbit of ``alpha`` as a set.

        Explanation
        ===========

        For a permutation group `G`, a transversal for the orbit
        `Orb = \{g(\alpha) | g \in G\}` is a set
        `\{g_\beta | g_\beta(\alpha) = \beta\}` for `\beta \in Orb`.
        Note that there may be more than one possible transversal.
        If ``pairs`` is set to ``True``, it returns the list of pairs
        `(\beta, g_\beta)`. For a proof of correctness, see [1], p.79

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> G = DihedralGroup(6)
        >>> G.orbit_transversal(0)
        [(5), (0 1 2 3 4 5), (0 5)(1 4)(2 3), (0 2 4)(1 3 5), (5)(0 4)(1 3), (0 3)(1 4)(2 5)]

        See Also
        ========

        orbit

        """
        return _orbit_transversal(self._degree, self.generators, alpha, pairs)

    def orbits(self, rep=False):
        """Return the orbits of ``self``, ordered according to lowest element
        in each orbit.

        Examples
        ========

        >>> from sympy.combinatorics.permutations import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation(1, 5)(2, 3)(4, 0, 6)
        >>> b = Permutation(1, 5)(3, 4)(2, 6, 0)
        >>> G = PermutationGroup([a, b])
        >>> G.orbits()
        [{0, 2, 3, 4, 6}, {1, 5}]
        """
        return _orbits(self._degree, self._generators)

    def order(self):
        """Return the order of the group: the number of permutations that
        can be generated from elements of the group.

        The number of permutations comprising the group is given by
        ``len(group)``; the length of each permutation in the group is
        given by ``group.size``.

        Examples
        ========

        >>> from sympy.combinatorics.permutations import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup

        >>> a = Permutation([1, 0, 2])
        >>> G = PermutationGroup([a])
        >>> G.degree
        3
        >>> len(G)
        1
        >>> G.order()
        2
        >>> list(G.generate())
        [(2), (2)(0 1)]

        >>> a = Permutation([0, 2, 1])
        >>> b = Permutation([1, 0, 2])
        >>> G = PermutationGroup([a, b])
        >>> G.order()
        6

        See Also
        ========

        degree

        """
        if self._order is not None:
            return self._order
        if self._is_sym:
            n = self._degree
            self._order = factorial(n)
            return self._order
        if self._is_alt:
            n = self._degree
            self._order = factorial(n)/2
            return self._order

        basic_transversals = self.basic_transversals
        m = 1
        for x in basic_transversals:
            m *= len(x)
        self._order = m
        return m

    def index(self, H):
        """
        Returns the index of a permutation group.

        Examples
        ========

        >>> from sympy.combinatorics.permutations import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation(1,2,3)
        >>> b =Permutation(3)
        >>> G = PermutationGroup([a])
        >>> H = PermutationGroup([b])
        >>> G.index(H)
        3

        """
        if H.is_subgroup(self):
            return self.order()//H.order()

    @property
    def is_symmetric(self):
        """Return ``True`` if the group is symmetric.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import SymmetricGroup
        >>> g = SymmetricGroup(5)
        >>> g.is_symmetric
        True

        >>> from sympy.combinatorics import Permutation, PermutationGroup
        >>> g = PermutationGroup(
        ...     Permutation(0, 1, 2, 3, 4),
        ...     Permutation(2, 3))
        >>> g.is_symmetric
        True

        Notes
        =====

        This uses a naive test involving the computation of the full
        group order.
        If you need more quicker taxonomy for large groups, you can use
        :meth:`PermutationGroup.is_alt_sym`.
        However, :meth:`PermutationGroup.is_alt_sym` may not be accurate
        and is not able to distinguish between an alternating group and
        a symmetric group.

        See Also
        ========

        is_alt_sym
        """
        _is_sym = self._is_sym
        if _is_sym is not None:
            return _is_sym

        n = self.degree
        if n >= 8:
            if self.is_transitive():
                _is_alt_sym = self._eval_is_alt_sym_monte_carlo()
                if _is_alt_sym:
                    if any(g.is_odd for g in self.generators):
                        self._is_sym, self._is_alt = True, False
                        return True

                    self._is_sym, self._is_alt = False, True
                    return False

                return self._eval_is_alt_sym_naive(only_sym=True)

            self._is_sym, self._is_alt = False, False
            return False

        return self._eval_is_alt_sym_naive(only_sym=True)


    @property
    def is_alternating(self):
        """Return ``True`` if the group is alternating.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import AlternatingGroup
        >>> g = AlternatingGroup(5)
        >>> g.is_alternating
        True

        >>> from sympy.combinatorics import Permutation, PermutationGroup
        >>> g = PermutationGroup(
        ...     Permutation(0, 1, 2, 3, 4),
        ...     Permutation(2, 3, 4))
        >>> g.is_alternating
        True

        Notes
        =====

        This uses a naive test involving the computation of the full
        group order.
        If you need more quicker taxonomy for large groups, you can use
        :meth:`PermutationGroup.is_alt_sym`.
        However, :meth:`PermutationGroup.is_alt_sym` may not be accurate
        and is not able to distinguish between an alternating group and
        a symmetric group.

        See Also
        ========

        is_alt_sym
        """
        _is_alt = self._is_alt
        if _is_alt is not None:
            return _is_alt

        n = self.degree
        if n >= 8:
            if self.is_transitive():
                _is_alt_sym = self._eval_is_alt_sym_monte_carlo()
                if _is_alt_sym:
                    if all(g.is_even for g in self.generators):
                        self._is_sym, self._is_alt = False, True
                        return True

                    self._is_sym, self._is_alt = True, False
                    return False

                return self._eval_is_alt_sym_naive(only_alt=True)

            self._is_sym, self._is_alt = False, False
            return False

        return self._eval_is_alt_sym_naive(only_alt=True)

    @classmethod
    def _distinct_primes_lemma(cls, primes):
        """Subroutine to test if there is only one cyclic group for the
        order."""
        primes = sorted(primes)
        l = len(primes)
        for i in range(l):
            for j in range(i+1, l):
                if primes[j] % primes[i] == 1:
                    return None
        return True

    @property
    def is_cyclic(self):
        r"""
        Return ``True`` if the group is Cyclic.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import AbelianGroup
        >>> G = AbelianGroup(3, 4)
        >>> G.is_cyclic
        True
        >>> G = AbelianGroup(4, 4)
        >>> G.is_cyclic
        False

        Notes
        =====

        If the order of a group $n$ can be factored into the distinct
        primes $p_1, p_2, ... , p_s$ and if

        .. math::
            \forall i, j \in \{1, 2, \ldots, s \}:
            p_i \not \equiv 1 \pmod {p_j}

        holds true, there is only one group of the order $n$ which
        is a cyclic group. [1]_ This is a generalization of the lemma
        that the group of order $15, 35, ...$ are cyclic.

        And also, these additional lemmas can be used to test if a
        group is cyclic if the order of the group is already found.

        - If the group is abelian and the order of the group is
          square-free, the group is cyclic.
        - If the order of the group is less than $6$ and is not $4$, the
          group is cyclic.
        - If the order of the group is prime, the group is cyclic.

        References
        ==========

        .. [1] 1978: John S. Rose: A Course on Group Theory,
            Introduction to Finite Group Theory: 1.4
        """
        if self._is_cyclic is not None:
            return self._is_cyclic

        if len(self.generators) == 1:
            self._is_cyclic = True
            self._is_abelian = True
            return True

        if self._is_abelian is False:
            self._is_cyclic = False
            return False

        order = self.order()

        if order < 6:
            self._is_abelian == True
            if order != 4:
                self._is_cyclic == True
                return True

        factors = factorint(order)
        if all(v == 1 for v in factors.values()):
            if self._is_abelian:
                self._is_cyclic = True
                return True

            primes = list(factors.keys())
            if PermutationGroup._distinct_primes_lemma(primes) is True:
                self._is_cyclic = True
                self._is_abelian = True
                return True

        for p in factors:
            pgens = []
            for g in self.generators:
                pgens.append(g**p)
            if self.index(self.subgroup(pgens)) != p:
                self._is_cyclic = False
                return False

        self._is_cyclic = True
        self._is_abelian = True
        return True

    def pointwise_stabilizer(self, points, incremental=True):
        r"""Return the pointwise stabilizer for a set of points.

        Explanation
        ===========

        For a permutation group `G` and a set of points
        `\{p_1, p_2,\ldots, p_k\}`, the pointwise stabilizer of
        `p_1, p_2, \ldots, p_k` is defined as
        `G_{p_1,\ldots, p_k} =
        \{g\in G | g(p_i) = p_i \forall i\in\{1, 2,\ldots,k\}\}` ([1],p20).
        It is a subgroup of `G`.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import SymmetricGroup
        >>> S = SymmetricGroup(7)
        >>> Stab = S.pointwise_stabilizer([2, 3, 5])
        >>> Stab.is_subgroup(S.stabilizer(2).stabilizer(3).stabilizer(5))
        True

        See Also
        ========

        stabilizer, schreier_sims_incremental

        Notes
        =====

        When incremental == True,
        rather than the obvious implementation using successive calls to
        ``.stabilizer()``, this uses the incremental Schreier-Sims algorithm
        to obtain a base with starting segment - the given points.

        """
        if incremental:
            base, strong_gens = self.schreier_sims_incremental(base=points)
            stab_gens = []
            degree = self.degree
            for gen in strong_gens:
                if [gen(point) for point in points] == points:
                    stab_gens.append(gen)
            if not stab_gens:
                stab_gens = _af_new(list(range(degree)))
            return PermutationGroup(stab_gens)
        else:
            gens = self._generators
            degree = self.degree
            for x in points:
                gens = _stabilizer(degree, gens, x)
        return PermutationGroup(gens)

    def make_perm(self, n, seed=None):
        """
        Multiply ``n`` randomly selected permutations from
        pgroup together, starting with the identity
        permutation. If ``n`` is a list of integers, those
        integers will be used to select the permutations and they
        will be applied in L to R order: make_perm((A, B, C)) will
        give CBA(I) where I is the identity permutation.

        ``seed`` is used to set the seed for the random selection
        of permutations from pgroup. If this is a list of integers,
        the corresponding permutations from pgroup will be selected
        in the order give. This is mainly used for testing purposes.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a, b = [Permutation([1, 0, 3, 2]), Permutation([1, 3, 0, 2])]
        >>> G = PermutationGroup([a, b])
        >>> G.make_perm(1, [0])
        (0 1)(2 3)
        >>> G.make_perm(3, [0, 1, 0])
        (0 2 3 1)
        >>> G.make_perm([0, 1, 0])
        (0 2 3 1)

        See Also
        ========

        random
        """
        if is_sequence(n):
            if seed is not None:
                raise ValueError('If n is a sequence, seed should be None')
            n, seed = len(n), n
        else:
            try:
                n = int(n)
            except TypeError:
                raise ValueError('n must be an integer or a sequence.')
        randrange = _randrange(seed)

        # start with the identity permutation
        result = Permutation(list(range(self.degree)))
        m = len(self)
        for i in range(n):
            p = self[randrange(m)]
            result = rmul(result, p)
        return result

    def random(self, af=False):
        """Return a random group element
        """
        rank = randrange(self.order())
        return self.coset_unrank(rank, af)

    def random_pr(self, gen_count=11, iterations=50, _random_prec=None):
        """Return a random group element using product replacement.

        Explanation
        ===========

        For the details of the product replacement algorithm, see
        ``_random_pr_init`` In ``random_pr`` the actual 'product replacement'
        is performed. Notice that if the attribute ``_random_gens``
        is empty, it needs to be initialized by ``_random_pr_init``.

        See Also
        ========

        _random_pr_init

        """
        if self._random_gens == []:
            self._random_pr_init(gen_count, iterations)
        random_gens = self._random_gens
        r = len(random_gens) - 1

        # handle randomized input for testing purposes
        if _random_prec is None:
            s = randrange(r)
            t = randrange(r - 1)
            if t == s:
                t = r - 1
            x = choice([1, 2])
            e = choice([-1, 1])
        else:
            s = _random_prec['s']
            t = _random_prec['t']
            if t == s:
                t = r - 1
            x = _random_prec['x']
            e = _random_prec['e']

        if x == 1:
            random_gens[s] = _af_rmul(random_gens[s], _af_pow(random_gens[t], e))
            random_gens[r] = _af_rmul(random_gens[r], random_gens[s])
        else:
            random_gens[s] = _af_rmul(_af_pow(random_gens[t], e), random_gens[s])
            random_gens[r] = _af_rmul(random_gens[s], random_gens[r])
        return _af_new(random_gens[r])

    def random_stab(self, alpha, schreier_vector=None, _random_prec=None):
        """Random element from the stabilizer of ``alpha``.

        The schreier vector for ``alpha`` is an optional argument used
        for speeding up repeated calls. The algorithm is described in [1], p.81

        See Also
        ========

        random_pr, orbit_rep

        """
        if schreier_vector is None:
            schreier_vector = self.schreier_vector(alpha)
        if _random_prec is None:
            rand = self.random_pr()
        else:
            rand = _random_prec['rand']
        beta = rand(alpha)
        h = self.orbit_rep(alpha, beta, schreier_vector)
        return rmul(~h, rand)

    def schreier_sims(self):
        """Schreier-Sims algorithm.

        Explanation
        ===========

        It computes the generators of the chain of stabilizers
        `G > G_{b_1} > .. > G_{b1,..,b_r} > 1`
        in which `G_{b_1,..,b_i}` stabilizes `b_1,..,b_i`,
        and the corresponding ``s`` cosets.
        An element of the group can be written as the product
        `h_1*..*h_s`.

        We use the incremental Schreier-Sims algorithm.

        Examples
        ========

        >>> from sympy.combinatorics.permutations import Permutation
        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> a = Permutation([0, 2, 1])
        >>> b = Permutation([1, 0, 2])
        >>> G = PermutationGroup([a, b])
        >>> G.schreier_sims()
        >>> G.basic_transversals
        [{0: (2)(0 1), 1: (2), 2: (1 2)},
         {0: (2), 2: (0 2)}]
        """
        if self._transversals:
            return
        self._schreier_sims()
        return

    def _schreier_sims(self, base=None):
        schreier = self.schreier_sims_incremental(base=base, slp_dict=True)
        base, strong_gens = schreier[:2]
        self._base = base
        self._strong_gens = strong_gens
        self._strong_gens_slp = schreier[2]
        if not base:
            self._transversals = []
            self._basic_orbits = []
            return

        strong_gens_distr = _distribute_gens_by_base(base, strong_gens)
        basic_orbits, transversals, slps = _orbits_transversals_from_bsgs(base,\
                strong_gens_distr, slp=True)

        # rewrite the indices stored in slps in terms of strong_gens
        for i, slp in enumerate(slps):
            gens = strong_gens_distr[i]
            for k in slp:
                slp[k] = [strong_gens.index(gens[s]) for s in slp[k]]

        self._transversals = transversals
        self._basic_orbits = [sorted(x) for x in basic_orbits]
        self._transversal_slp = slps

    def schreier_sims_incremental(self, base=None, gens=None, slp_dict=False):
        """Extend a sequence of points and generating set to a base and strong
        generating set.

        Parameters
        ==========

        base
            The sequence of points to be extended to a base. Optional
            parameter with default value ``[]``.
        gens
            The generating set to be extended to a strong generating set
            relative to the base obtained. Optional parameter with default
            value ``self.generators``.

        slp_dict
            If `True`, return a dictionary `{g: gens}` for each strong
            generator `g` where `gens` is a list of strong generators
            coming before `g` in `strong_gens`, such that the product
            of the elements of `gens` is equal to `g`.

        Returns
        =======

        (base, strong_gens)
            ``base`` is the base obtained, and ``strong_gens`` is the strong
            generating set relative to it. The original parameters ``base``,
            ``gens`` remain unchanged.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import AlternatingGroup
        >>> from sympy.combinatorics.testutil import _verify_bsgs
        >>> A = AlternatingGroup(7)
        >>> base = [2, 3]
        >>> seq = [2, 3]
        >>> base, strong_gens = A.schreier_sims_incremental(base=seq)
        >>> _verify_bsgs(A, base, strong_gens)
        True
        >>> base[:2]
        [2, 3]

        Notes
        =====

        This version of the Schreier-Sims algorithm runs in polynomial time.
        There are certain assumptions in the implementation - if the trivial
        group is provided, ``base`` and ``gens`` are returned immediately,
        as any sequence of points is a base for the trivial group. If the
        identity is present in the generators ``gens``, it is removed as
        it is a redundant generator.
        The implementation is described in [1], pp. 90-93.

        See Also
        ========

        schreier_sims, schreier_sims_random

        """
        if base is None:
            base = []
        if gens is None:
            gens = self.generators[:]
        degree = self.degree
        id_af = list(range(degree))
        # handle the trivial group
        if len(gens) == 1 and gens[0].is_Identity:
            if slp_dict:
                return base, gens, {gens[0]: [gens[0]]}
            return base, gens
        # prevent side effects
        _base, _gens = base[:], gens[:]
        # remove the identity as a generator
        _gens = [x for x in _gens if not x.is_Identity]
        # make sure no generator fixes all base points
        for gen in _gens:
            if all(x == gen._array_form[x] for x in _base):
                for new in id_af:
                    if gen._array_form[new] != new:
                        break
                else:
                    assert None  # can this ever happen?
                _base.append(new)
        # distribute generators according to basic stabilizers
        strong_gens_distr = _distribute_gens_by_base(_base, _gens)
        strong_gens_slp = []
        # initialize the basic stabilizers, basic orbits and basic transversals
        orbs = {}
        transversals = {}
        slps = {}
        base_len = len(_base)
        for i in range(base_len):
            transversals[i], slps[i] = _orbit_transversal(degree, strong_gens_distr[i],
                _base[i], pairs=True, af=True, slp=True)
            transversals[i] = dict(transversals[i])
            orbs[i] = list(transversals[i].keys())
        # main loop: amend the stabilizer chain until we have generators
        # for all stabilizers
        i = base_len - 1
        while i >= 0:
            # this flag is used to continue with the main loop from inside
            # a nested loop
            continue_i = False
            # test the generators for being a strong generating set
            db = {}
            for beta, u_beta in list(transversals[i].items()):
                for j, gen in enumerate(strong_gens_distr[i]):
                    gb = gen._array_form[beta]
                    u1 = transversals[i][gb]
                    g1 = _af_rmul(gen._array_form, u_beta)
                    slp = [(i, g) for g in slps[i][beta]]
                    slp = [(i, j)] + slp
                    if g1 != u1:
                        # test if the schreier generator is in the i+1-th
                        # would-be basic stabilizer
                        y = True
                        try:
                            u1_inv = db[gb]
                        except KeyError:
                            u1_inv = db[gb] = _af_invert(u1)
                        schreier_gen = _af_rmul(u1_inv, g1)
                        u1_inv_slp = slps[i][gb][:]
                        u1_inv_slp.reverse()
                        u1_inv_slp = [(i, (g,)) for g in u1_inv_slp]
                        slp = u1_inv_slp + slp
                        h, j, slp = _strip_af(schreier_gen, _base, orbs, transversals, i, slp=slp, slps=slps)
                        if j <= base_len:
                            # new strong generator h at level j
                            y = False
                        elif h:
                            # h fixes all base points
                            y = False
                            moved = 0
                            while h[moved] == moved:
                                moved += 1
                            _base.append(moved)
                            base_len += 1
                            strong_gens_distr.append([])
                        if y is False:
                            # if a new strong generator is found, update the
                            # data structures and start over
                            h = _af_new(h)
                            strong_gens_slp.append((h, slp))
                            for l in range(i + 1, j):
                                strong_gens_distr[l].append(h)
                                transversals[l], slps[l] =\
                                _orbit_transversal(degree, strong_gens_distr[l],
                                    _base[l], pairs=True, af=True, slp=True)
                                transversals[l] = dict(transversals[l])
                                orbs[l] = list(transversals[l].keys())
                            i = j - 1
                            # continue main loop using the flag
                            continue_i = True
                    if continue_i is True:
                        break
                if continue_i is True:
                    break
            if continue_i is True:
                continue
            i -= 1

        strong_gens = _gens[:]

        if slp_dict:
            # create the list of the strong generators strong_gens and
            # rewrite the indices of strong_gens_slp in terms of the
            # elements of strong_gens
            for k, slp in strong_gens_slp:
                strong_gens.append(k)
                for i in range(len(slp)):
                    s = slp[i]
                    if isinstance(s[1], tuple):
                        slp[i] = strong_gens_distr[s[0]][s[1][0]]**-1
                    else:
                        slp[i] = strong_gens_distr[s[0]][s[1]]
            strong_gens_slp = dict(strong_gens_slp)
            # add the original generators
            for g in _gens:
                strong_gens_slp[g] = [g]
            return (_base, strong_gens, strong_gens_slp)

        strong_gens.extend([k for k, _ in strong_gens_slp])
        return _base, strong_gens

    def schreier_sims_random(self, base=None, gens=None, consec_succ=10,
                             _random_prec=None):
        r"""Randomized Schreier-Sims algorithm.

        Explanation
        ===========

        The randomized Schreier-Sims algorithm takes the sequence ``base``
        and the generating set ``gens``, and extends ``base`` to a base, and
        ``gens`` to a strong generating set relative to that base with
        probability of a wrong answer at most `2^{-consec\_succ}`,
        provided the random generators are sufficiently random.

        Parameters
        ==========

        base
            The sequence to be extended to a base.
        gens
            The generating set to be extended to a strong generating set.
        consec_succ
            The parameter defining the probability of a wrong answer.
        _random_prec
            An internal parameter used for testing purposes.

        Returns
        =======

        (base, strong_gens)
            ``base`` is the base and ``strong_gens`` is the strong generating
            set relative to it.

        Examples
        ========

        >>> from sympy.combinatorics.testutil import _verify_bsgs
        >>> from sympy.combinatorics.named_groups import SymmetricGroup
        >>> S = SymmetricGroup(5)
        >>> base, strong_gens = S.schreier_sims_random(consec_succ=5)
        >>> _verify_bsgs(S, base, strong_gens) #doctest: +SKIP
        True

        Notes
        =====

        The algorithm is described in detail in [1], pp. 97-98. It extends
        the orbits ``orbs`` and the permutation groups ``stabs`` to
        basic orbits and basic stabilizers for the base and strong generating
        set produced in the end.
        The idea of the extension process
        is to "sift" random group elements through the stabilizer chain
        and amend the stabilizers/orbits along the way when a sift
        is not successful.
        The helper function ``_strip`` is used to attempt
        to decompose a random group element according to the current
        state of the stabilizer chain and report whether the element was
        fully decomposed (successful sift) or not (unsuccessful sift). In
        the latter case, the level at which the sift failed is reported and
        used to amend ``stabs``, ``base``, ``gens`` and ``orbs`` accordingly.
        The halting condition is for ``consec_succ`` consecutive successful
        sifts to pass. This makes sure that the current ``base`` and ``gens``
        form a BSGS with probability at least `1 - 1/\text{consec\_succ}`.

        See Also
        ========

        schreier_sims

        """
        if base is None:
            base = []
        if gens is None:
            gens = self.generators
        base_len = len(base)
        n = self.degree
        # make sure no generator fixes all base points
        for gen in gens:
            if all(gen(x) == x for x in base):
                new = 0
                while gen._array_form[new] == new:
                    new += 1
                base.append(new)
                base_len += 1
        # distribute generators according to basic stabilizers
        strong_gens_distr = _distribute_gens_by_base(base, gens)
        # initialize the basic stabilizers, basic transversals and basic orbits
        transversals = {}
        orbs = {}
        for i in range(base_len):
            transversals[i] = dict(_orbit_transversal(n, strong_gens_distr[i],
                base[i], pairs=True))
            orbs[i] = list(transversals[i].keys())
        # initialize the number of consecutive elements sifted
        c = 0
        # start sifting random elements while the number of consecutive sifts
        # is less than consec_succ
        while c < consec_succ:
            if _random_prec is None:
                g = self.random_pr()
            else:
                g = _random_prec['g'].pop()
            h, j = _strip(g, base, orbs, transversals)
            y = True
            # determine whether a new base point is needed
            if j <= base_len:
                y = False
            elif not h.is_Identity:
                y = False
                moved = 0
                while h(moved) == moved:
                    moved += 1
                base.append(moved)
                base_len += 1
                strong_gens_distr.append([])
            # if the element doesn't sift, amend the strong generators and
            # associated stabilizers and orbits
            if y is False:
                for l in range(1, j):
                    strong_gens_distr[l].append(h)
                    transversals[l] = dict(_orbit_transversal(n,
                        strong_gens_distr[l], base[l], pairs=True))
                    orbs[l] = list(transversals[l].keys())
                c = 0
            else:
                c += 1
        # build the strong generating set
        strong_gens = strong_gens_distr[0][:]
        for gen in strong_gens_distr[1]:
            if gen not in strong_gens:
                strong_gens.append(gen)
        return base, strong_gens

    def schreier_vector(self, alpha):
        """Computes the schreier vector for ``alpha``.

        Explanation
        ===========

        The Schreier vector efficiently stores information
        about the orbit of ``alpha``. It can later be used to quickly obtain
        elements of the group that send ``alpha`` to a particular element
        in the orbit. Notice that the Schreier vector depends on the order
        in which the group generators are listed. For a definition, see [3].
        Since list indices start from zero, we adopt the convention to use
        "None" instead of 0 to signify that an element doesn't belong
        to the orbit.
        For the algorithm and its correctness, see [2], pp.78-80.

        Examples
        ========

        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> from sympy.combinatorics.permutations import Permutation
        >>> a = Permutation([2, 4, 6, 3, 1, 5, 0])
        >>> b = Permutation([0, 1, 3, 5, 4, 6, 2])
        >>> G = PermutationGroup([a, b])
        >>> G.schreier_vector(0)
        [-1, None, 0, 1, None, 1, 0]

        See Also
        ========

        orbit

        """
        n = self.degree
        v = [None]*n
        v[alpha] = -1
        orb = [alpha]
        used = [False]*n
        used[alpha] = True
        gens = self.generators
        r = len(gens)
        for b in orb:
            for i in range(r):
                temp = gens[i]._array_form[b]
                if used[temp] is False:
                    orb.append(temp)
                    used[temp] = True
                    v[temp] = i
        return v

    def stabilizer(self, alpha):
        r"""Return the stabilizer subgroup of ``alpha``.

        Explanation
        ===========

        The stabilizer of `\alpha` is the group `G_\alpha =
        \{g \in G | g(\alpha) = \alpha\}`.
        For a proof of correctness, see [1], p.79.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> G = DihedralGroup(6)
        >>> G.stabilizer(5)
        PermutationGroup([
            (5)(0 4)(1 3)])

        See Also
        ========

        orbit

        """
        return PermGroup(_stabilizer(self._degree, self._generators, alpha))

    @property
    def strong_gens(self):
        r"""Return a strong generating set from the Schreier-Sims algorithm.

        Explanation
        ===========

        A generating set `S = \{g_1, g_2, ..., g_t\}` for a permutation group
        `G` is a strong generating set relative to the sequence of points
        (referred to as a "base") `(b_1, b_2, ..., b_k)` if, for
        `1 \leq i \leq k` we have that the intersection of the pointwise
        stabilizer `G^{(i+1)} := G_{b_1, b_2, ..., b_i}` with `S` generates
        the pointwise stabilizer `G^{(i+1)}`. The concepts of a base and
        strong generating set and their applications are discussed in depth
        in [1], pp. 87-89 and [2], pp. 55-57.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> D = DihedralGroup(4)
        >>> D.strong_gens
        [(0 1 2 3), (0 3)(1 2), (1 3)]
        >>> D.base
        [0, 1]

        See Also
        ========

        base, basic_transversals, basic_orbits, basic_stabilizers

        """
        if self._strong_gens == []:
            self.schreier_sims()
        return self._strong_gens

    def subgroup(self, gens):
        """
           Return the subgroup generated by `gens` which is a list of
           elements of the group
        """

        if not all([g in self for g in gens]):
            raise ValueError("The group doesn't contain the supplied generators")

        G = PermutationGroup(gens)
        return G

    def subgroup_search(self, prop, base=None, strong_gens=None, tests=None,
                        init_subgroup=None):
        """Find the subgroup of all elements satisfying the property ``prop``.

        Explanation
        ===========

        This is done by a depth-first search with respect to base images that
        uses several tests to prune the search tree.

        Parameters
        ==========

        prop
            The property to be used. Has to be callable on group elements
            and always return ``True`` or ``False``. It is assumed that
            all group elements satisfying ``prop`` indeed form a subgroup.
        base
            A base for the supergroup.
        strong_gens
            A strong generating set for the supergroup.
        tests
            A list of callables of length equal to the length of ``base``.
            These are used to rule out group elements by partial base images,
            so that ``tests[l](g)`` returns False if the element ``g`` is known
            not to satisfy prop base on where g sends the first ``l + 1`` base
            points.
        init_subgroup
            if a subgroup of the sought group is
            known in advance, it can be passed to the function as this
            parameter.

        Returns
        =======

        res
            The subgroup of all elements satisfying ``prop``. The generating
            set for this group is guaranteed to be a strong generating set
            relative to the base ``base``.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import (SymmetricGroup,
        ... AlternatingGroup)
        >>> from sympy.combinatorics.testutil import _verify_bsgs
        >>> S = SymmetricGroup(7)
        >>> prop_even = lambda x: x.is_even
        >>> base, strong_gens = S.schreier_sims_incremental()
        >>> G = S.subgroup_search(prop_even, base=base, strong_gens=strong_gens)
        >>> G.is_subgroup(AlternatingGroup(7))
        True
        >>> _verify_bsgs(G, base, G.generators)
        True

        Notes
        =====

        This function is extremely lengthy and complicated and will require
        some careful attention. The implementation is described in
        [1], pp. 114-117, and the comments for the code here follow the lines
        of the pseudocode in the book for clarity.

        The complexity is exponential in general, since the search process by
        itself visits all members of the supergroup. However, there are a lot
        of tests which are used to prune the search tree, and users can define
        their own tests via the ``tests`` parameter, so in practice, and for
        some computations, it's not terrible.

        A crucial part in the procedure is the frequent base change performed
        (this is line 11 in the pseudocode) in order to obtain a new basic
        stabilizer. The book mentiones that this can be done by using
        ``.baseswap(...)``, however the current implementation uses a more
        straightforward way to find the next basic stabilizer - calling the
        function ``.stabilizer(...)`` on the previous basic stabilizer.

        """
        # initialize BSGS and basic group properties
        def get_reps(orbits):
            # get the minimal element in the base ordering
            return [min(orbit, key = lambda x: base_ordering[x]) \
              for orbit in orbits]

        def update_nu(l):
            temp_index = len(basic_orbits[l]) + 1 -\
                         len(res_basic_orbits_init_base[l])
            # this corresponds to the element larger than all points
            if temp_index >= len(sorted_orbits[l]):
                nu[l] = base_ordering[degree]
            else:
                nu[l] = sorted_orbits[l][temp_index]

        if base is None:
            base, strong_gens = self.schreier_sims_incremental()
        base_len = len(base)
        degree = self.degree
        identity = _af_new(list(range(degree)))
        base_ordering = _base_ordering(base, degree)
        # add an element larger than all points
        base_ordering.append(degree)
        # add an element smaller than all points
        base_ordering.append(-1)
        # compute BSGS-related structures
        strong_gens_distr = _distribute_gens_by_base(base, strong_gens)
        basic_orbits, transversals = _orbits_transversals_from_bsgs(base,
                                     strong_gens_distr)
        # handle subgroup initialization and tests
        if init_subgroup is None:
            init_subgroup = PermutationGroup([identity])
        if tests is None:
            trivial_test = lambda x: True
            tests = []
            for i in range(base_len):
                tests.append(trivial_test)
        # line 1: more initializations.
        res = init_subgroup
        f = base_len - 1
        l = base_len - 1
        # line 2: set the base for K to the base for G
        res_base = base[:]
        # line 3: compute BSGS and related structures for K
        res_base, res_strong_gens = res.schreier_sims_incremental(
            base=res_base)
        res_strong_gens_distr = _distribute_gens_by_base(res_base,
                                res_strong_gens)
        res_generators = res.generators
        res_basic_orbits_init_base = \
        [_orbit(degree, res_strong_gens_distr[i], res_base[i])\
         for i in range(base_len)]
        # initialize orbit representatives
        orbit_reps = [None]*base_len
        # line 4: orbit representatives for f-th basic stabilizer of K
        orbits = _orbits(degree, res_strong_gens_distr[f])
        orbit_reps[f] = get_reps(orbits)
        # line 5: remove the base point from the representatives to avoid
        # getting the identity element as a generator for K
        orbit_reps[f].remove(base[f])
        # line 6: more initializations
        c = [0]*base_len
        u = [identity]*base_len
        sorted_orbits = [None]*base_len
        for i in range(base_len):
            sorted_orbits[i] = basic_orbits[i][:]
            sorted_orbits[i].sort(key=lambda point: base_ordering[point])
        # line 7: initializations
        mu = [None]*base_len
        nu = [None]*base_len
        # this corresponds to the element smaller than all points
        mu[l] = degree + 1
        update_nu(l)
        # initialize computed words
        computed_words = [identity]*base_len
        # line 8: main loop
        while True:
            # apply all the tests
            while l < base_len - 1 and \
                computed_words[l](base[l]) in orbit_reps[l] and \
                base_ordering[mu[l]] < \
                base_ordering[computed_words[l](base[l])] < \
                base_ordering[nu[l]] and \
                    tests[l](computed_words):
                # line 11: change the (partial) base of K
                new_point = computed_words[l](base[l])
                res_base[l] = new_point
                new_stab_gens = _stabilizer(degree, res_strong_gens_distr[l],
                        new_point)
                res_strong_gens_distr[l + 1] = new_stab_gens
                # line 12: calculate minimal orbit representatives for the
                # l+1-th basic stabilizer
                orbits = _orbits(degree, new_stab_gens)
                orbit_reps[l + 1] = get_reps(orbits)
                # line 13: amend sorted orbits
                l += 1
                temp_orbit = [computed_words[l - 1](point) for point
                             in basic_orbits[l]]
                temp_orbit.sort(key=lambda point: base_ordering[point])
                sorted_orbits[l] = temp_orbit
                # lines 14 and 15: update variables used minimality tests
                new_mu = degree + 1
                for i in range(l):
                    if base[l] in res_basic_orbits_init_base[i]:
                        candidate = computed_words[i](base[i])
                        if base_ordering[candidate] > base_ordering[new_mu]:
                            new_mu = candidate
                mu[l] = new_mu
                update_nu(l)
                # line 16: determine the new transversal element
                c[l] = 0
                temp_point = sorted_orbits[l][c[l]]
                gamma = computed_words[l - 1]._array_form.index(temp_point)
                u[l] = transversals[l][gamma]
                # update computed words
                computed_words[l] = rmul(computed_words[l - 1], u[l])
            # lines 17 & 18: apply the tests to the group element found
            g = computed_words[l]
            temp_point = g(base[l])
            if l == base_len - 1 and \
                base_ordering[mu[l]] < \
                base_ordering[temp_point] < base_ordering[nu[l]] and \
                temp_point in orbit_reps[l] and \
                tests[l](computed_words) and \
                    prop(g):
                # line 19: reset the base of K
                res_generators.append(g)
                res_base = base[:]
                # line 20: recalculate basic orbits (and transversals)
                res_strong_gens.append(g)
                res_strong_gens_distr = _distribute_gens_by_base(res_base,
                                                          res_strong_gens)
                res_basic_orbits_init_base = \
                [_orbit(degree, res_strong_gens_distr[i], res_base[i]) \
                 for i in range(base_len)]
                # line 21: recalculate orbit representatives
                # line 22: reset the search depth
                orbit_reps[f] = get_reps(orbits)
                l = f
            # line 23: go up the tree until in the first branch not fully
            # searched
            while l >= 0 and c[l] == len(basic_orbits[l]) - 1:
                l = l - 1
            # line 24: if the entire tree is traversed, return K
            if l == -1:
                return PermutationGroup(res_generators)
            # lines 25-27: update orbit representatives
            if l < f:
                # line 26
                f = l
                c[l] = 0
                # line 27
                temp_orbits = _orbits(degree, res_strong_gens_distr[f])
                orbit_reps[f] = get_reps(temp_orbits)
                # line 28: update variables used for minimality testing
                mu[l] = degree + 1
                temp_index = len(basic_orbits[l]) + 1 - \
                    len(res_basic_orbits_init_base[l])
                if temp_index >= len(sorted_orbits[l]):
                    nu[l] = base_ordering[degree]
                else:
                    nu[l] = sorted_orbits[l][temp_index]
            # line 29: set the next element from the current branch and update
            # accordingly
            c[l] += 1
            if l == 0:
                gamma  = sorted_orbits[l][c[l]]
            else:
                gamma = computed_words[l - 1]._array_form.index(sorted_orbits[l][c[l]])

            u[l] = transversals[l][gamma]
            if l == 0:
                computed_words[l] = u[l]
            else:
                computed_words[l] = rmul(computed_words[l - 1], u[l])

    @property
    def transitivity_degree(self):
        r"""Compute the degree of transitivity of the group.

        Explanation
        ===========

        A permutation group `G` acting on `\Omega = \{0, 1, ..., n-1\}` is
        ``k``-fold transitive, if, for any k points
        `(a_1, a_2, ..., a_k)\in\Omega` and any k points
        `(b_1, b_2, ..., b_k)\in\Omega` there exists `g\in G` such that
        `g(a_1)=b_1, g(a_2)=b_2, ..., g(a_k)=b_k`
        The degree of transitivity of `G` is the maximum ``k`` such that
        `G` is ``k``-fold transitive. ([8])

        Examples
        ========

        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> from sympy.combinatorics.permutations import Permutation
        >>> a = Permutation([1, 2, 0])
        >>> b = Permutation([1, 0, 2])
        >>> G = PermutationGroup([a, b])
        >>> G.transitivity_degree
        3

        See Also
        ========

        is_transitive, orbit

        """
        if self._transitivity_degree is None:
            n = self.degree
            G = self
            # if G is k-transitive, a tuple (a_0,..,a_k)
            # can be brought to (b_0,...,b_(k-1), b_k)
            # where b_0,...,b_(k-1) are fixed points;
            # consider the group G_k which stabilizes b_0,...,b_(k-1)
            # if G_k is transitive on the subset excluding b_0,...,b_(k-1)
            # then G is (k+1)-transitive
            for i in range(n):
                orb = G.orbit(i)
                if len(orb) != n - i:
                    self._transitivity_degree = i
                    return i
                G = G.stabilizer(i)
            self._transitivity_degree = n
            return n
        else:
            return self._transitivity_degree

    def _p_elements_group(G, p):
        '''
        For an abelian p-group G return the subgroup consisting of
        all elements of order p (and the identity)

        '''
        gens = G.generators[:]
        gens = sorted(gens, key=lambda x: x.order(), reverse=True)
        gens_p = [g**(g.order()/p) for g in gens]
        gens_r = []
        for i in range(len(gens)):
            x = gens[i]
            x_order = x.order()
            # x_p has order p
            x_p = x**(x_order/p)
            if i > 0:
                P = PermutationGroup(gens_p[:i])
            else:
                P = PermutationGroup(G.identity)
            if x**(x_order/p) not in P:
                gens_r.append(x**(x_order/p))
            else:
                # replace x by an element of order (x.order()/p)
                # so that gens still generates G
                g = P.generator_product(x_p, original=True)
                for s in g:
                    x = x*s**-1
                x_order = x_order/p
                # insert x to gens so that the sorting is preserved
                del gens[i]
                del gens_p[i]
                j = i - 1
                while j < len(gens) and gens[j].order() >= x_order:
                    j += 1
                gens = gens[:j] + [x] + gens[j:]
                gens_p = gens_p[:j] + [x] + gens_p[j:]
        return PermutationGroup(gens_r)

    def _sylow_alt_sym(self, p):
        '''
        Return a p-Sylow subgroup of a symmetric or an
        alternating group.

        Explanation
        ===========

        The algorithm for this is hinted at in [1], Chapter 4,
        Exercise 4.

        For Sym(n) with n = p^i, the idea is as follows. Partition
        the interval [0..n-1] into p equal parts, each of length p^(i-1):
        [0..p^(i-1)-1], [p^(i-1)..2*p^(i-1)-1]...[(p-1)*p^(i-1)..p^i-1].
        Find a p-Sylow subgroup of Sym(p^(i-1)) (treated as a subgroup
        of ``self``) acting on each of the parts. Call the subgroups
        P_1, P_2...P_p. The generators for the subgroups P_2...P_p
        can be obtained from those of P_1 by applying a "shifting"
        permutation to them, that is, a permutation mapping [0..p^(i-1)-1]
        to the second part (the other parts are obtained by using the shift
        multiple times). The union of this permutation and the generators
        of P_1 is a p-Sylow subgroup of ``self``.

        For n not equal to a power of p, partition
        [0..n-1] in accordance with how n would be written in base p.
        E.g. for p=2 and n=11, 11 = 2^3 + 2^2 + 1 so the partition
        is [[0..7], [8..9], {10}]. To generate a p-Sylow subgroup,
        take the union of the generators for each of the parts.
        For the above example, {(0 1), (0 2)(1 3), (0 4), (1 5)(2 7)}
        from the first part, {(8 9)} from the second part and
        nothing from the third. This gives 4 generators in total, and
        the subgroup they generate is p-Sylow.

        Alternating groups are treated the same except when p=2. In this
        case, (0 1)(s s+1) should be added for an appropriate s (the start
        of a part) for each part in the partitions.

        See Also
        ========

        sylow_subgroup, is_alt_sym

        '''
        n = self.degree
        gens = []
        identity = Permutation(n-1)
        # the case of 2-sylow subgroups of alternating groups
        # needs special treatment
        alt = p == 2 and all(g.is_even for g in self.generators)

        # find the presentation of n in base p
        coeffs = []
        m = n
        while m > 0:
            coeffs.append(m % p)
            m = m // p

        power = len(coeffs)-1
        # for a symmetric group, gens[:i] is the generating
        # set for a p-Sylow subgroup on [0..p**(i-1)-1]. For
        # alternating groups, the same is given by gens[:2*(i-1)]
        for i in range(1, power+1):
            if i == 1 and alt:
                # (0 1) shouldn't be added for alternating groups
                continue
            gen = Permutation([(j + p**(i-1)) % p**i for j in range(p**i)])
            gens.append(identity*gen)
            if alt:
                gen = Permutation(0, 1)*gen*Permutation(0, 1)*gen
                gens.append(gen)

        # the first point in the current part (see the algorithm
        # description in the docstring)
        start = 0

        while power > 0:
            a = coeffs[power]

            # make the permutation shifting the start of the first
            # part ([0..p^i-1] for some i) to the current one
            for s in range(a):
                shift = Permutation()
                if start > 0:
                    for i in range(p**power):
                        shift = shift(i, start + i)

                    if alt:
                        gen = Permutation(0, 1)*shift*Permutation(0, 1)*shift
                        gens.append(gen)
                        j = 2*(power - 1)
                    else:
                        j = power

                    for i, gen in enumerate(gens[:j]):
                        if alt and i % 2 == 1:
                            continue
                        # shift the generator to the start of the
                        # partition part
                        gen = shift*gen*shift
                        gens.append(gen)

                start += p**power
            power = power-1

        return gens

    def sylow_subgroup(self, p):
        '''
        Return a p-Sylow subgroup of the group.

        The algorithm is described in [1], Chapter 4, Section 7

        Examples
        ========
        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> from sympy.combinatorics.named_groups import SymmetricGroup
        >>> from sympy.combinatorics.named_groups import AlternatingGroup

        >>> D = DihedralGroup(6)
        >>> S = D.sylow_subgroup(2)
        >>> S.order()
        4
        >>> G = SymmetricGroup(6)
        >>> S = G.sylow_subgroup(5)
        >>> S.order()
        5

        >>> G1 = AlternatingGroup(3)
        >>> G2 = AlternatingGroup(5)
        >>> G3 = AlternatingGroup(9)

        >>> S1 = G1.sylow_subgroup(3)
        >>> S2 = G2.sylow_subgroup(3)
        >>> S3 = G3.sylow_subgroup(3)

        >>> len1 = len(S1.lower_central_series())
        >>> len2 = len(S2.lower_central_series())
        >>> len3 = len(S3.lower_central_series())

        >>> len1 == len2
        True
        >>> len1 < len3
        True

        '''
        from sympy.combinatorics.homomorphisms import (
                orbit_homomorphism, block_homomorphism)
        from sympy.ntheory.primetest import isprime

        if not isprime(p):
            raise ValueError("p must be a prime")

        def is_p_group(G):
            # check if the order of G is a power of p
            # and return the power
            m = G.order()
            n = 0
            while m % p == 0:
                m = m/p
                n += 1
                if m == 1:
                    return True, n
            return False, n

        def _sylow_reduce(mu, nu):
            # reduction based on two homomorphisms
            # mu and nu with trivially intersecting
            # kernels
            Q = mu.image().sylow_subgroup(p)
            Q = mu.invert_subgroup(Q)
            nu = nu.restrict_to(Q)
            R = nu.image().sylow_subgroup(p)
            return nu.invert_subgroup(R)

        order = self.order()
        if order % p != 0:
            return PermutationGroup([self.identity])
        p_group, n = is_p_group(self)
        if p_group:
            return self

        if self.is_alt_sym():
            return PermutationGroup(self._sylow_alt_sym(p))

        # if there is a non-trivial orbit with size not divisible
        # by p, the sylow subgroup is contained in its stabilizer
        # (by orbit-stabilizer theorem)
        orbits = self.orbits()
        non_p_orbits = [o for o in orbits if len(o) % p != 0 and len(o) != 1]
        if non_p_orbits:
            G = self.stabilizer(list(non_p_orbits[0]).pop())
            return G.sylow_subgroup(p)

        if not self.is_transitive():
            # apply _sylow_reduce to orbit actions
            orbits = sorted(orbits, key = lambda x: len(x))
            omega1 = orbits.pop()
            omega2 = orbits[0].union(*orbits)
            mu = orbit_homomorphism(self, omega1)
            nu = orbit_homomorphism(self, omega2)
            return _sylow_reduce(mu, nu)

        blocks = self.minimal_blocks()
        if len(blocks) > 1:
            # apply _sylow_reduce to block system actions
            mu = block_homomorphism(self, blocks[0])
            nu = block_homomorphism(self, blocks[1])
            return _sylow_reduce(mu, nu)
        elif len(blocks) == 1:
            block = list(blocks)[0]
            if any(e != 0 for e in block):
                # self is imprimitive
                mu = block_homomorphism(self, block)
                if not is_p_group(mu.image())[0]:
                    S = mu.image().sylow_subgroup(p)
                    return mu.invert_subgroup(S).sylow_subgroup(p)

        # find an element of order p
        g = self.random()
        g_order = g.order()
        while g_order % p != 0 or g_order == 0:
            g = self.random()
            g_order = g.order()
        g = g**(g_order // p)
        if order % p**2 != 0:
            return PermutationGroup(g)

        C = self.centralizer(g)
        while C.order() % p**n != 0:
            S = C.sylow_subgroup(p)
            s_order = S.order()
            Z = S.center()
            P = Z._p_elements_group(p)
            h = P.random()
            C_h = self.centralizer(h)
            while C_h.order() % p*s_order != 0:
                h = P.random()
                C_h = self.centralizer(h)
            C = C_h

        return C.sylow_subgroup(p)

    def _block_verify(H, L, alpha):
        delta = sorted(list(H.orbit(alpha)))
        H_gens = H.generators
        # p[i] will be the number of the block
        # delta[i] belongs to
        p = [-1]*len(delta)
        blocks = [-1]*len(delta)

        B = [[]] # future list of blocks
        u = [0]*len(delta) # u[i] in L s.t. alpha^u[i] = B[0][i]

        t = L.orbit_transversal(alpha, pairs=True)
        for a, beta in t:
            B[0].append(a)
            i_a = delta.index(a)
            p[i_a] = 0
            blocks[i_a] = alpha
            u[i_a] = beta

        rho = 0
        m = 0 # number of blocks - 1

        while rho <= m:
            beta = B[rho][0]
            for g in H_gens:
                d = beta^g
                i_d = delta.index(d)
                sigma = p[i_d]
                if sigma < 0:
                    # define a new block
                    m += 1
                    sigma = m
                    u[i_d] = u[delta.index(beta)]*g
                    p[i_d] = sigma
                    rep = d
                    blocks[i_d] = rep
                    newb = [rep]
                    for gamma in B[rho][1:]:
                        i_gamma = delta.index(gamma)
                        d = gamma^g
                        i_d = delta.index(d)
                        if p[i_d] < 0:
                            u[i_d] = u[i_gamma]*g
                            p[i_d] = sigma
                            blocks[i_d] = rep
                            newb.append(d)
                        else:
                            # B[rho] is not a block
                            s = u[i_gamma]*g*u[i_d]**(-1)
                            return False, s

                    B.append(newb)
                else:
                    for h in B[rho][1:]:
                        if not h^g in B[sigma]:
                            # B[rho] is not a block
                            s = u[delta.index(beta)]*g*u[i_d]**(-1)
                            return False, s
            rho += 1

        return True, blocks

    def _verify(H, K, phi, z, alpha):
        '''
        Return a list of relators ``rels`` in generators ``gens`_h` that
        are mapped to ``H.generators`` by ``phi`` so that given a finite
        presentation <gens_k | rels_k> of ``K`` on a subset of ``gens_h``
        <gens_h | rels_k + rels> is a finite presentation of ``H``.

        Explanation
        ===========

        ``H`` should be generated by the union of ``K.generators`` and ``z``
        (a single generator), and ``H.stabilizer(alpha) == K``; ``phi`` is a
        canonical injection from a free group into a permutation group
        containing ``H``.

        The algorithm is described in [1], Chapter 6.

        Examples
        ========

        >>> from sympy.combinatorics.perm_groups import PermutationGroup
        >>> from sympy.combinatorics import Permutation
        >>> from sympy.combinatorics.homomorphisms import homomorphism
        >>> from sympy.combinatorics.free_groups import free_group
        >>> from sympy.combinatorics.fp_groups import FpGroup

        >>> H = PermutationGroup(Permutation(0, 2), Permutation (1, 5))
        >>> K = PermutationGroup(Permutation(5)(0, 2))
        >>> F = free_group("x_0 x_1")[0]
        >>> gens = F.generators
        >>> phi = homomorphism(F, H, F.generators, H.generators)
        >>> rels_k = [gens[0]**2] # relators for presentation of K
        >>> z= Permutation(1, 5)
        >>> check, rels_h = H._verify(K, phi, z, 1)
        >>> check
        True
        >>> rels = rels_k + rels_h
        >>> G = FpGroup(F, rels) # presentation of H
        >>> G.order() == H.order()
        True

        See also
        ========

        strong_presentation, presentation, stabilizer

        '''

        orbit = H.orbit(alpha)
        beta = alpha^(z**-1)

        K_beta = K.stabilizer(beta)

        # orbit representatives of K_beta
        gammas = [alpha, beta]
        orbits = list({tuple(K_beta.orbit(o)) for o in orbit})
        orbit_reps = [orb[0] for orb in orbits]
        for rep in orbit_reps:
            if rep not in gammas:
                gammas.append(rep)

        # orbit transversal of K
        betas = [alpha, beta]
        transversal = {alpha: phi.invert(H.identity), beta: phi.invert(z**-1)}

        for s, g in K.orbit_transversal(beta, pairs=True):
            if not s in transversal:
                transversal[s] = transversal[beta]*phi.invert(g)


        union = K.orbit(alpha).union(K.orbit(beta))
        while (len(union) < len(orbit)):
            for gamma in gammas:
                if gamma in union:
                    r = gamma^z
                    if r not in union:
                        betas.append(r)
                        transversal[r] = transversal[gamma]*phi.invert(z)
                        for s, g in K.orbit_transversal(r, pairs=True):
                            if not s in transversal:
                                transversal[s] = transversal[r]*phi.invert(g)
                        union = union.union(K.orbit(r))
                        break

        # compute relators
        rels = []

        for b in betas:
            k_gens = K.stabilizer(b).generators
            for y in k_gens:
                new_rel = transversal[b]
                gens = K.generator_product(y, original=True)
                for g in gens[::-1]:
                    new_rel = new_rel*phi.invert(g)
                new_rel = new_rel*transversal[b]**-1

                perm = phi(new_rel)
                try:
                    gens = K.generator_product(perm, original=True)
                except ValueError:
                    return False, perm
                for g in gens:
                    new_rel = new_rel*phi.invert(g)**-1
                if new_rel not in rels:
                    rels.append(new_rel)

        for gamma in gammas:
            new_rel = transversal[gamma]*phi.invert(z)*transversal[gamma^z]**-1
            perm = phi(new_rel)
            try:
                gens = K.generator_product(perm, original=True)
            except ValueError:
                return False, perm
            for g in gens:
               new_rel = new_rel*phi.invert(g)**-1
            if new_rel not in rels:
                rels.append(new_rel)

        return True, rels

    def strong_presentation(G):
        '''
        Return a strong finite presentation of `G`. The generators
        of the returned group are in the same order as the strong
        generators of `G`.

        The algorithm is based on Sims' Verify algorithm described
        in [1], Chapter 6.

        Examples
        ========

        >>> from sympy.combinatorics.named_groups import DihedralGroup
        >>> P = DihedralGroup(4)
        >>> G = P.strong_presentation()
        >>> P.order() == G.order()
        True

        See Also
        ========

        presentation, _verify

        '''
        from sympy.combinatorics.fp_groups import (FpGroup,
                                            simplify_presentation)
        from sympy.combinatorics.free_groups import free_group
        from sympy.combinatorics.homomorphisms import (block_homomorphism,
                                           homomorphism, GroupHomomorphism)

        strong_gens = G.strong_gens[:]
        stabs = G.basic_stabilizers[:]
        base = G.base[:]

        # injection from a free group on len(strong_gens)
        # generators into G
        gen_syms = [('x_%d'%i) for i in range(len(strong_gens))]
        F = free_group(', '.join(gen_syms))[0]
        phi = homomorphism(F, G, F.generators, strong_gens)

        H = PermutationGroup(G.identity)
        while stabs:
            alpha = base.pop()
            K = H
            H = stabs.pop()
            new_gens = [g for g in H.generators if g not in K]

            if K.order() == 1:
                z = new_gens.pop()
                rels = [F.generators[-1]**z.order()]
                intermediate_gens = [z]
                K = PermutationGroup(intermediate_gens)

            # add generators one at a time building up from K to H
            while new_gens:
                z = new_gens.pop()
                intermediate_gens = [z] + intermediate_gens
                K_s = PermutationGroup(intermediate_gens)
                orbit = K_s.orbit(alpha)
                orbit_k = K.orbit(alpha)

                # split into cases based on the orbit of K_s
                if orbit_k == orbit:
                    if z in K:
                        rel = phi.invert(z)
                        perm = z
                    else:
                        t = K.orbit_rep(alpha, alpha^z)
                        rel = phi.invert(z)*phi.invert(t)**-1
                        perm = z*t**-1
                    for g in K.generator_product(perm, original=True):
                        rel = rel*phi.invert(g)**-1
                    new_rels = [rel]
                elif len(orbit_k) == 1:
                    # `success` is always true because `strong_gens`
                    # and `base` are already a verified BSGS. Later
                    # this could be changed to start with a randomly
                    # generated (potential) BSGS, and then new elements
                    # would have to be appended to it when `success`
                    # is false.
                    success, new_rels = K_s._verify(K, phi, z, alpha)
                else:
                    # K.orbit(alpha) should be a block
                    # under the action of K_s on K_s.orbit(alpha)
                    check, block = K_s._block_verify(K, alpha)
                    if check:
                        # apply _verify to the action of K_s
                        # on the block system; for convenience,
                        # add the blocks as additional points
                        # that K_s should act on
                        t = block_homomorphism(K_s, block)
                        m = t.codomain.degree # number of blocks
                        d = K_s.degree

                        # conjugating with p will shift
                        # permutations in t.image() to
                        # higher numbers, e.g.
                        # p*(0 1)*p = (m m+1)
                        p = Permutation()
                        for i in range(m):
                            p *= Permutation(i, i+d)

                        t_img = t.images
                        # combine generators of K_s with their
                        # action on the block system
                        images = {g: g*p*t_img[g]*p for g in t_img}
                        for g in G.strong_gens[:-len(K_s.generators)]:
                            images[g] = g
                        K_s_act = PermutationGroup(list(images.values()))
                        f = GroupHomomorphism(G, K_s_act, images)

                        K_act = PermutationGroup([f(g) for g in K.generators])
                        success, new_rels = K_s_act._verify(K_act, f.compose(phi), f(z), d)

                for n in new_rels:
                    if not n in rels:
                        rels.append(n)
                K = K_s

        group = FpGroup(F, rels)
        return simplify_presentation(group)

    def presentation(G, eliminate_gens=True):
        '''
        Return an `FpGroup` presentation of the group.

        The algorithm is described in [1], Chapter 6.1.

        '''
        from sympy.combinatorics.fp_groups import (FpGroup,
                                            simplify_presentation)
        from sympy.combinatorics.coset_table import CosetTable
        from sympy.combinatorics.free_groups import free_group
        from sympy.combinatorics.homomorphisms import homomorphism
        from itertools import product

        if G._fp_presentation:
            return G._fp_presentation

        if G._fp_presentation:
            return G._fp_presentation

        def _factor_group_by_rels(G, rels):
            if isinstance(G, FpGroup):
                rels.extend(G.relators)
                return FpGroup(G.free_group, list(set(rels)))
            return FpGroup(G, rels)

        gens = G.generators
        len_g = len(gens)

        if len_g == 1:
            order = gens[0].order()
            # handle the trivial group
            if order == 1:
                return free_group([])[0]
            F, x = free_group('x')
            return FpGroup(F, [x**order])

        if G.order() > 20:
            half_gens = G.generators[0:(len_g+1)//2]
        else:
            half_gens = []
        H = PermutationGroup(half_gens)
        H_p = H.presentation()

        len_h = len(H_p.generators)

        C = G.coset_table(H)
        n = len(C) # subgroup index

        gen_syms = [('x_%d'%i) for i in range(len(gens))]
        F = free_group(', '.join(gen_syms))[0]

        # mapping generators of H_p to those of F
        images = [F.generators[i] for i in range(len_h)]
        R = homomorphism(H_p, F, H_p.generators, images, check=False)

        # rewrite relators
        rels = R(H_p.relators)
        G_p = FpGroup(F, rels)

        # injective homomorphism from G_p into G
        T = homomorphism(G_p, G, G_p.generators, gens)

        C_p = CosetTable(G_p, [])

        C_p.table = [[None]*(2*len_g) for i in range(n)]

        # initiate the coset transversal
        transversal = [None]*n
        transversal[0] = G_p.identity

        # fill in the coset table as much as possible
        for i in range(2*len_h):
            C_p.table[0][i] = 0

        gamma = 1
        for alpha, x in product(range(0, n), range(2*len_g)):
            beta = C[alpha][x]
            if beta == gamma:
                gen = G_p.generators[x//2]**((-1)**(x % 2))
                transversal[beta] = transversal[alpha]*gen
                C_p.table[alpha][x] = beta
                C_p.table[beta][x + (-1)**(x % 2)] = alpha
                gamma += 1
                if gamma == n:
                    break

        C_p.p = list(range(n))
        beta = x = 0

        while not C_p.is_complete():
            # find the first undefined entry
            while C_p.table[beta][x] == C[beta][x]:
                x = (x + 1) % (2*len_g)
                if x == 0:
                    beta = (beta + 1) % n

            # define a new relator
            gen = G_p.generators[x//2]**((-1)**(x % 2))
            new_rel = transversal[beta]*gen*transversal[C[beta][x]]**-1
            perm = T(new_rel)
            next = G_p.identity
            for s in H.generator_product(perm, original=True):
                next = next*T.invert(s)**-1
            new_rel = new_rel*next

            # continue coset enumeration
            G_p = _factor_group_by_rels(G_p, [new_rel])
            C_p.scan_and_fill(0, new_rel)
            C_p = G_p.coset_enumeration([], strategy="coset_table",
                                draft=C_p, max_cosets=n, incomplete=True)

        G._fp_presentation = simplify_presentation(G_p)
        return G._fp_presentation

    def polycyclic_group(self):
        """
        Return the PolycyclicGroup instance with below parameters:

        Explanation
        ===========

        * ``pc_sequence`` : Polycyclic sequence is formed by collecting all
          the missing generators between the adjacent groups in the
          derived series of given permutation group.

        * ``pc_series`` : Polycyclic series is formed by adding all the missing
          generators of ``der[i+1]`` in ``der[i]``, where ``der`` represents
          the derived series.

        * ``relative_order`` : A list, computed by the ratio of adjacent groups in
          pc_series.

        """
        from sympy.combinatorics.pc_groups import PolycyclicGroup
        if not self.is_polycyclic:
            raise ValueError("The group must be solvable")

        der = self.derived_series()
        pc_series = []
        pc_sequence = []
        relative_order = []
        pc_series.append(der[-1])
        der.reverse()

        for i in range(len(der)-1):
            H = der[i]
            for g in der[i+1].generators:
                if g not in H:
                    H = PermutationGroup([g] + H.generators)
                    pc_series.insert(0, H)
                    pc_sequence.insert(0, g)

                    G1 = pc_series[0].order()
                    G2 = pc_series[1].order()
                    relative_order.insert(0, G1 // G2)

        return PolycyclicGroup(pc_sequence, pc_series, relative_order, collector=None)


def _orbit(degree, generators, alpha, action='tuples'):
    r"""Compute the orbit of alpha `\{g(\alpha) | g \in G\}` as a set.

    Explanation
    ===========

    The time complexity of the algorithm used here is `O(|Orb|*r)` where
    `|Orb|` is the size of the orbit and ``r`` is the number of generators of
    the group. For a more detailed analysis, see [1], p.78, [2], pp. 19-21.
    Here alpha can be a single point, or a list of points.

    If alpha is a single point, the ordinary orbit is computed.
    if alpha is a list of points, there are three available options:

    'union' - computes the union of the orbits of the points in the list
    'tuples' - computes the orbit of the list interpreted as an ordered
    tuple under the group action ( i.e., g((1, 2, 3)) = (g(1), g(2), g(3)) )
    'sets' - computes the orbit of the list interpreted as a sets

    Examples
    ========

    >>> from sympy.combinatorics import Permutation
    >>> from sympy.combinatorics.perm_groups import PermutationGroup, _orbit
    >>> a = Permutation([1, 2, 0, 4, 5, 6, 3])
    >>> G = PermutationGroup([a])
    >>> _orbit(G.degree, G.generators, 0)
    {0, 1, 2}
    >>> _orbit(G.degree, G.generators, [0, 4], 'union')
    {0, 1, 2, 3, 4, 5, 6}

    See Also
    ========

    orbit, orbit_transversal

    """
    if not hasattr(alpha, '__getitem__'):
        alpha = [alpha]

    gens = [x._array_form for x in generators]
    if len(alpha) == 1 or action == 'union':
        orb = alpha
        used = [False]*degree
        for el in alpha:
            used[el] = True
        for b in orb:
            for gen in gens:
                temp = gen[b]
                if used[temp] == False:
                    orb.append(temp)
                    used[temp] = True
        return set(orb)
    elif action == 'tuples':
        alpha = tuple(alpha)
        orb = [alpha]
        used = {alpha}
        for b in orb:
            for gen in gens:
                temp = tuple([gen[x] for x in b])
                if temp not in used:
                    orb.append(temp)
                    used.add(temp)
        return set(orb)
    elif action == 'sets':
        alpha = frozenset(alpha)
        orb = [alpha]
        used = {alpha}
        for b in orb:
            for gen in gens:
                temp = frozenset([gen[x] for x in b])
                if temp not in used:
                    orb.append(temp)
                    used.add(temp)
        return {tuple(x) for x in orb}

def _orbits(degree, generators):
    """Compute the orbits of G.

    If ``rep=False`` it returns a list of sets else it returns a list of
    representatives of the orbits

    Examples
    ========

    >>> from sympy.combinatorics.permutations import Permutation
    >>> from sympy.combinatorics.perm_groups import _orbits
    >>> a = Permutation([0, 2, 1])
    >>> b = Permutation([1, 0, 2])
    >>> _orbits(a.size, [a, b])
    [{0, 1, 2}]
    """

    orbs = []
    sorted_I = list(range(degree))
    I = set(sorted_I)
    while I:
        i = sorted_I[0]
        orb = _orbit(degree, generators, i)
        orbs.append(orb)
        # remove all indices that are in this orbit
        I -= orb
        sorted_I = [i for i in sorted_I if i not in orb]
    return orbs

def _orbit_transversal(degree, generators, alpha, pairs, af=False, slp=False):
    r"""Computes a transversal for the orbit of ``alpha`` as a set.

    Explanation
    ===========

    generators   generators of the group ``G``

    For a permutation group ``G``, a transversal for the orbit
    `Orb = \{g(\alpha) | g \in G\}` is a set
    `\{g_\beta | g_\beta(\alpha) = \beta\}` for `\beta \in Orb`.
    Note that there may be more than one possible transversal.
    If ``pairs`` is set to ``True``, it returns the list of pairs
    `(\beta, g_\beta)`. For a proof of correctness, see [1], p.79

    if ``af`` is ``True``, the transversal elements are given in
    array form.

    If `slp` is `True`, a dictionary `{beta: slp_beta}` is returned
    for `\beta \in Orb` where `slp_beta` is a list of indices of the
    generators in `generators` s.t. if `slp_beta = [i_1 ... i_n]`
    `g_\beta = generators[i_n]*...*generators[i_1]`.

    Examples
    ========

    >>> from sympy.combinatorics.named_groups import DihedralGroup
    >>> from sympy.combinatorics.perm_groups import _orbit_transversal
    >>> G = DihedralGroup(6)
    >>> _orbit_transversal(G.degree, G.generators, 0, False)
    [(5), (0 1 2 3 4 5), (0 5)(1 4)(2 3), (0 2 4)(1 3 5), (5)(0 4)(1 3), (0 3)(1 4)(2 5)]
    """

    tr = [(alpha, list(range(degree)))]
    slp_dict = {alpha: []}
    used = [False]*degree
    used[alpha] = True
    gens = [x._array_form for x in generators]
    for x, px in tr:
        px_slp = slp_dict[x]
        for gen in gens:
            temp = gen[x]
            if used[temp] == False:
                slp_dict[temp] = [gens.index(gen)] + px_slp
                tr.append((temp, _af_rmul(gen, px)))
                used[temp] = True
    if pairs:
        if not af:
            tr = [(x, _af_new(y)) for x, y in tr]
        if not slp:
            return tr
        return tr, slp_dict

    if af:
        tr = [y for _, y in tr]
        if not slp:
            return tr
        return tr, slp_dict

    tr = [_af_new(y) for _, y in tr]
    if not slp:
        return tr
    return tr, slp_dict

def _stabilizer(degree, generators, alpha):
    r"""Return the stabilizer subgroup of ``alpha``.

    Explanation
    ===========

    The stabilizer of `\alpha` is the group `G_\alpha =
    \{g \in G | g(\alpha) = \alpha\}`.
    For a proof of correctness, see [1], p.79.

    degree :       degree of G
    generators :   generators of G

    Examples
    ========

    >>> from sympy.combinatorics.perm_groups import _stabilizer
    >>> from sympy.combinatorics.named_groups import DihedralGroup
    >>> G = DihedralGroup(6)
    >>> _stabilizer(G.degree, G.generators, 5)
    [(5)(0 4)(1 3), (5)]

    See Also
    ========

    orbit

    """
    orb = [alpha]
    table = {alpha: list(range(degree))}
    table_inv = {alpha: list(range(degree))}
    used = [False]*degree
    used[alpha] = True
    gens = [x._array_form for x in generators]
    stab_gens = []
    for b in orb:
        for gen in gens:
            temp = gen[b]
            if used[temp] is False:
                gen_temp = _af_rmul(gen, table[b])
                orb.append(temp)
                table[temp] = gen_temp
                table_inv[temp] = _af_invert(gen_temp)
                used[temp] = True
            else:
                schreier_gen = _af_rmuln(table_inv[temp], gen, table[b])
                if schreier_gen not in stab_gens:
                    stab_gens.append(schreier_gen)
    return [_af_new(x) for x in stab_gens]

PermGroup = PermutationGroup

class SymmetricPermutationGroup(Basic):
    """
    The class defining the lazy form of SymmetricGroup.

    deg : int

    """

    def __new__(cls, deg):
        deg = _sympify(deg)
        obj = Basic.__new__(cls, deg)
        obj._deg = deg
        obj._order = None
        return obj

    def __contains__(self, i):
        """Return ``True`` if *i* is contained in SymmetricPermutationGroup.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, SymmetricPermutationGroup
        >>> G = SymmetricPermutationGroup(4)
        >>> Permutation(1, 2, 3) in G
        True

        """
        if not isinstance(i, Permutation):
            raise TypeError("A SymmetricPermutationGroup contains only Permutations as "
                            "elements, not elements of type %s" % type(i))
        return i.size == self.degree

    def order(self):
        """
        Return the order of the SymmetricPermutationGroup.

        Examples
        ========

        >>> from sympy.combinatorics import SymmetricPermutationGroup
        >>> G = SymmetricPermutationGroup(4)
        >>> G.order()
        24
        """
        if self._order is not None:
            return self._order
        n = self._deg
        self._order = factorial(n)
        return self._order

    @property
    def degree(self):
        """
        Return the degree of the SymmetricPermutationGroup.

        Examples
        ========

        >>> from sympy.combinatorics import SymmetricPermutationGroup
        >>> G = SymmetricPermutationGroup(4)
        >>> G.degree
        4

        """
        return self._deg

    @property
    def identity(self):
        '''
        Return the identity element of the SymmetricPermutationGroup.

        Examples
        ========

        >>> from sympy.combinatorics import SymmetricPermutationGroup
        >>> G = SymmetricPermutationGroup(4)
        >>> G.identity()
        (3)

        '''
        return _af_new(list(range(self._deg)))


class Coset(Basic):
    """A left coset of a permutation group with respect to an element.

    Parameters
    ==========

    g : Permutation

    H : PermutationGroup

    dir : "+" or "-", If not specified by default it will be "+"
        here ``dir`` specified the type of coset "+" represent the
        right coset and "-" represent the left coset.

    G : PermutationGroup, optional
        The group which contains *H* as its subgroup and *g* as its
        element.

        If not specified, it would automatically become a symmetric
        group ``SymmetricPermutationGroup(g.size)`` and
        ``SymmetricPermutationGroup(H.degree)`` if ``g.size`` and ``H.degree``
        are matching.``SymmetricPermutationGroup`` is a lazy form of SymmetricGroup
        used for representation purpose.

    """

    def __new__(cls, g, H, G=None, dir="+"):
        g = _sympify(g)
        if not isinstance(g, Permutation):
            raise NotImplementedError

        H = _sympify(H)
        if not isinstance(H, PermutationGroup):
            raise NotImplementedError

        if G is not None:
            G = _sympify(G)
            if not isinstance(G, PermutationGroup) and not isinstance(G, SymmetricPermutationGroup):
                raise NotImplementedError
            if not H.is_subgroup(G):
                raise ValueError("{} must be a subgroup of {}.".format(H, G))
            if g not in G:
                raise ValueError("{} must be an element of {}.".format(g, G))
        else:
            g_size = g.size
            h_degree = H.degree
            if g_size != h_degree:
                raise ValueError(
                    "The size of the permutation {} and the degree of "
                    "the permutation group {} should be matching "
                    .format(g, H))
            G = SymmetricPermutationGroup(g.size)

        if isinstance(dir, str):
            dir = Symbol(dir)
        elif not isinstance(dir, Symbol):
            raise TypeError("dir must be of type basestring or "
                    "Symbol, not %s" % type(dir))
        if str(dir) not in ('+', '-'):
            raise ValueError("dir must be one of '+' or '-' not %s" % dir)
        obj = Basic.__new__(cls, g, H, G, dir)
        obj._dir = dir
        return obj

    @property
    def is_left_coset(self):
        """
        Check if the coset is left coset that is ``gH``.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, PermutationGroup, Coset
        >>> a = Permutation(1, 2)
        >>> b = Permutation(0, 1)
        >>> G = PermutationGroup([a, b])
        >>> cst = Coset(a, G, dir="-")
        >>> cst.is_left_coset
        True

        """
        return str(self._dir) == '-'

    @property
    def is_right_coset(self):
        """
        Check if the coset is right coset that is ``Hg``.

        Examples
        ========

        >>> from sympy.combinatorics import Permutation, PermutationGroup, Coset
        >>> a = Permutation(1, 2)
        >>> b = Permutation(0, 1)
        >>> G = PermutationGroup([a, b])
        >>> cst = Coset(a, G, dir="+")
        >>> cst.is_right_coset
        True

        """
        return str(self._dir) == '+'

    def as_list(self):
        """
        Return all the elements of coset in the form of list.
        """
        g = self.args[0]
        H = self.args[1]
        cst = []
        if str(self._dir) == '+':
            for h in H.elements:
                cst.append(h*g)
        else:
            for h in H.elements:
                cst.append(g*h)
        return cst
